FINAL REPORT ADVANCED COLOR IMAGE ASSESSMENT CONCEPTS

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CIA-RDP78B04747A001100020006-2
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RIPPUB
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K
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165
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December 28, 2016
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December 2, 2004
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6
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Publication Date: 
July 1, 1968
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REPORT
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Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 FR-68-6 FINAL REPORT ADVANCED COLOR IMAGE ASSESSMENT CONCEPTS STATINTL Declass Review by NGA/DOD Approved For Release 2005/02/10 : ClA-RDP78B04747A0@1 100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 FR-68-6 ADVANCED COLOR IMAGE ASSESSMENT CONCEPTS July 1968 by STATINTL STATINTL Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 STATINTL The programming capabilities of cannot go unacknowledged. Their efforts have made the theoretical proce- dures described within this report operational facts. The optical evaluation of the performance of achromat objectives in a color Micro- Analyzer system was performed by standing of the advantages and disadvantages of the current Analyzer system has been very valuable. STATINTL His contribution to the under- STATINTL Trichromatic Micro- STATINTL Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 Image assessment procedures currently exist for black-and-white materials only. Color image assessment and densitometry are defined only on the macroscale at pre- sent. It is the objective of this report to combine these two fields to generate a color image assessment technique based on those current image assessment measures that can be applied to color tripack materials. The vector and matrix properties of color materials are defined and applied to noise assessment, ensemble averaging, and modu- lation transfer function. The shortcomings of the effective exposure technique are dis- cussed, and a method is described for generating valid effective exposure tables for color materials. It is possible that similar methods may be used in the generation of target spectral signatures from color imagery. Quality control methods applicable for color trichromatic and black-and-white microdensitometers are reviewed. Infor- mation concerning the integral to analytical density conversion for three-color material is presented, and all auxiliary experimental work in support of this program is reported. Of particular interest is the investigation of the problems associated with the use of achromat objectives in trichromatic microdensitometers. Approved For Release 2005/02/10 : Cliff-RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 (This page is intentionally left blank. ) Approved For Release 2005/0~Y10 : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 Section Title Page I INTRODUCTION . . . . . . . . . . . . . . . . . . . . . . . 1 II SPECTRAL PROPERTIES OF COLOR AND COLOR MATERIALS . 3 A. Properties of Groups . . . . . . . . . . . . . . . . . 3 1. Closure . . . . . . . . . . . . . . . . . . . . . 3 2. Associativity . . . . . . . . . . . . . . . . . . . 3 3. Id entity Element . . . . . . . . . . . . . . . . . 3 4. Inverse . . . . . . . . . . . . . . . . . . . . . 4 5. Commutativity . . . . . . . . . . . . . . . . . . 4 B. Integral and Analytical Densities . . . . . . . . . . . . 4 C. Vector Properties . . . . . . . . . . . . . . . . . . . 9 III AVERAGING OF MICRODENSITOMETER RECORDS . . . . . . 19 A. Necessity of Gaussian Assumptions . . . . . . . . . . . 19 B. Calculating the Gaussian Mean and Standard Deviation . . 19 IV NOISE MEASUREMENT . . . . . . . . . . . . . . . . . . . 27 A. Classical Methods . . . . . . . . . . . . . . . . . . 27 B. Correlation Method . . . . . . . . . . . . . . . . . 32 1. Autocorrelation . . . . . . . . . . . . . . . . . 35 2. Cross Correlation . . . . . . . . . . . . . . . . . 37 3. Matrix Formulation . . . . . . . . . . . . . . . . 38 C. Binomial Methods . . . . . . . . . . . . . . . . . . . 40 V EFFECTIVE EXPOSURE CONCEPTS FOR COLOR MATERIALS . 45 A. Basis for Effective Exposure Concept . . . . . . . . . . 45 B. Effective Exposure Concept and Color Materials . . . . . 49 C. Exposure Table Generation for Color Materials . . . . . 55 D. Summary . . . . . . . . . . . . . . . . . . . . . . 61 VI MODULATION TRANSFER FUNCTIONS FOR COLOR MATERIALS 65 A. Introduction . . . . . . . . . . . . . . . . . . . . . 65 B. Modulation Transfer Function Generation . . . . . . . . 65 C. Color Materials . . . . . . . . . . . . . . . . . . . 67 VII QUALITY CONTROL OF THE MICRODENSITOMETER . . . . . 69 A. Introduction . . . . . . . . . . . . . . . . . . . . . 69 B. Ideal Development of Quality Control System . . . . . . . 69 Approved For Release 2005/02/10 : Cl -RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 CONTENTS (cont'd.) Section Title Page C. General Program Objectives . . . . . . . . . . . . . . . 70 D. Drift Analysis . . . . . . . . . . . . . . . . . . . . . 71 E. Frequency Response Stability . . . . . . . . . . . . . . 75 F. Noise Injection Analysis . . . . . . . . . . . . . . . . . 81 G. Summary of the Quality Control Procedures . . . . . . . . 83 H. The Quality Control Target . . . . . . . . . . . . . . . 85 VIII LITERATURE REFERENCES . . . . . . . . . . . . . . . . . 91 Ap pendix A IN TH TEGRAL TO ANALYTICAL DENSITY CALIBRATION OF REE-COLOR TRANSPARENCY MATERIALS . . . . . . . . . A-1 B CO DIS MPUTATION OF ALPHA RISKS FOR VARIOUS TRIBUTIONS . . . . . . . . . . . . . . . . . . . . . . . B-1 C NO MA ISE MEASUREMENT STUDIES PERFORMED ON COLOR TERIALS . . . . . . . . . . . . . . . . . . . . . . . . . C-1 D RE AN LATION BETWEEN ANALYTICAL AND INTEGRAL AUTO D CROSS CORRELATIONS . . . . . . . . . . . . . . . . . D-1 E PR SO ODUCTION OF STEP WEDGES FROM NON-NEUTRAL URCES . . . . . . . . . . . . . . . . . . . . . . . . . E-1 F SA MPLE PROBLEM IN MULTIVARIATE COMPONENT ANALYSIS F-1 G OP TICAL EVALUATION AND RECOMMENDATIONS FOR THE STATINTL I PRECISION TRICHROMATIC MICRODENSI - TO METER 1032T . . . . . . . . . . . . . . . . . . . . . . G-1 Approved For Release 2005/02110 : CIA-RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 Fig. No. Title Page 1 Dye Spectral Density Curves of l1SO-151 Transparency STATINTL Material . . . . . . . . . . . . . . . . . . . . . . . . . . . 5 2 Minor Density as a Function of Major Density: Emulsion 155-16-32 8 3 Idealized Block Dye System . . . . . . . . . . . . . . . . . . 11 4a Two Block Dye System that Obeys Beer's Law . . . . . . . . . 13 4b Two Block Dye System that Does Not Obey Beer's Law . . . . . 14 5 Angular Relationship of Dye Vectors . . . . . . . . . . . . . . 15 6 Spectral Density Curves . . . . . . . . . . . . . . . . . . . 16 7 Example of Density Frequency Histogram . . . . . . . . . . . 21 8 Selwyn's Relation for Two Black-and-White Materials . . . . . . 28 9 RMS Granularity vs Scanning Spot Diameter for Two Color Materials . . . . . . . . . . . . . . . . . . . . . . . . . . 30 10 Differences Between Integral and Analytical Noise Records . . . . 31 11 Typical Autocorrelation Function for Black-and-White Material at a Given Density Level . . . . . . . . . . . . . . . . . . . 34 12 Power Spectral Density Functions for Black-and-White Materials . 34 13 Experimental Data and Model Bernoulli Curve (Not Normalized) 41 14 Callier's Q as a Function of Diffuse Density and Gamma for a Given Material . . . . . . . . . . . . . . . . . . . . . . . . 47 15 Characteristic Curve of Cyan Dye Layer of SO-151 Emulsion Exposed to a Neutral and Resulting Exposure Table . . . . . . . 50 16 Characteristic Curves as a Function of Object Color . . . . . . . 52 17 Color Samples and Spectral Reflectance Curves . . . . . . . . . 53 18 Wavelength Dependence of Yellow Dye Layer of 8442 STATINTL Emulsion . . . . . . . . . . . . . . . . . . . . . . . . 54 19 Exposure Table Generation System . . . . . . . . . . . . . . . 62 20 Quality Control Computation Flowchart . . . . . . . . . . . . . 84 21 Fourier Transform of Comb Target . . . . . . . . . . . . . . 86 22 Fourier Transform Envelope Function . . . . . . . . . . . . . 88 23 Microdensitometer Quality Control Target . . . . . . . . . . . 89 v11 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 ILLUSTRATIONS (cont'd. ) Fig. No. E2 E3 E4 E5 E6 E7 E8 E9 E10 Ell E12 E13 E14 E15 Title Page Spectral Sensitivity of SO-151 Emulsion . . . . . . . . . . . . A-2 Spectral Sensitivity of SO-155 Emulsion . . . . . . . . . . . . A-3 Spectral Sensitivity of 8442 Emulsion . . . . . . . . . . . . . A-4 Minor vs Major Density and Characteristic Curves . . . . . . . A-7 Minor vs Major Density and Characteristic Curves . . . . . . . A-8 Minor vs Major Density and Characteristic Curves . . . . . . . A-9 Minor vs Major Density and Characteristic Curves . . . . . . . A-10 Minor vs Major Density and Characteristic Curves . . . . . . . A-11 Minor vs Major Density and Characteristic Curves . . . . . . . A-12 Minor vs Major Density and Characteristic Curves . . . . . . . A-13 Minor vs Major Density and Characteristic Curves . . . . . . . A-14 Minor vs Major Density and Characteristic Curves . . . . . . . A-15 Optical Arrangement Used to Generate Non-Neutral Microstep Wedges . . . . . . . . . . . . . . . . . . . . . . . . . . . E-2 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . E-5 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . Spectral Reflectance Curve Spectral Reflectance Curve Spectral Reflectance Curve Spectral Reflectance Curve Spectral Reflectance Curve Spectral Reflectance Curve Spectral Reflectance Curve Spectral Reflectance Curve Spectral Reflectance Curve Spectral Reflectance Curve Spectral Reflectance Curve Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . E-5 E-5 E-6 E-6 E-6 E-7 E-7 E-7 E-8 E-8 E-8 E-9 E-9 Approved For Release 2005/01N6 : CIA-RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 ILLUSTRATIONS (cont'd.) Fig. No. Title Page STATINTL E16 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . E-9 E17 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . E-10 E18 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . E-10 E19 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . E-10 E20 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . E- 11 E21 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . E-11 E22 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . E-11 E23 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . E-12 E24 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . E-12 E25 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . E-12 E26 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . . E-13 E27 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . E-13 E28 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . E-13 E29 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . E-14 E30 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . E-14 E31 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . E-14 E32 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . . E-15 E33 Spectral Reflectance Curve . . . . . . . . . . . . . . . . . . E-15 GI Schematic ofE~richromatic Microdensitometer 1032T . . . . G-2 G2 Schematic Representation of Wavelength Dependence of Epiplan 8 Focus . . . . . . . . . . . . . . . . . . . . . . . . . . . G-4 Epiplan 8/0.2 . . . . . . . . . . . . . . . . . . . G-6 Ultrafluar 10/0.2 . . . . . . . . . . . . . . . . . G-7 Epiplan 16/0.35 . . . . . . . . . . . . . . . . . G-8 Defocusing Effect . . . . . . . . . . . . . . . . . . . . . . G-9 Schematic Representation of a Multilayer Color Film . . . . . . G-9 Three-Bar Target Focused with 546 Millimicron Filter and Traced with 546 Millimicron Filter . . . . . . . . . . . . . . . . . . G-11 G9 Three-Bar Target Focused with 436 Millimicron Filter and Traced with 546 Millimicron Filter . . . . . . . . . . . . . . . . . . G-13 Approved For Release 2005/02/10 : Cf'i-RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 (This page is intentionally left blank. ) Approved For Release 2005/02/40 : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 Because of increasing utilization, the area of color reconnaissance has come under scrutiny in terms of its operational effectiveness and actual usefulness as a detection tool. Color reconnaissance methods have been pressed into use without detailed evi- dence of actual enhancement of the photo interpretation results. Because of the sub- jective factors inherent in photo interpretation tasks, it is questionable if this detailed evidence can be derived. Nevertheless, color imagery is being used, and for this reason it is desirable to assess the quality of this imagery in manners similar to those to which the reconnaissance community is already accustomed in the assessment of black-and-white materials. Research into color image assessment, with thoughts of retaining the basic methods used in black-and-white image assessment (along with all its problems plus a few more), may not represent the peak of scientific advancement. The basic question, however, is purely pragmatic: "Can we, with suitable modification, develop a color image assess- ment technique for transparency materials using the accustomed microdensitometric techniques?" The objective of this program is to answer this question and to place constraints, where necessary, upon the answer. A search of the literature to determine what previous work has been done with this problem has been futile for the most part. The results of this search are cited as refer- ences on the following pages. Some work of Russian researchers is applicable. 1, w ? ,7 In the literature, color density has been studied primarily from the macroscale view- point. Whenever color microdensitometry results have been reported, the microden- sitometric methods are not given. Thus, the assumption must be made that a standard black-and-white instrument was used to trace color materials. This is commonly accomplished by placing the red, green, or blue filter at the light source or over the photomultiplier (PMT) housing. If red, green, and blue records are desired from * For convenience, all references are listed in Section VIII rather than when they occur in the text. Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 the same sample, then three scans must be performed. Since it cannot be assumed that the sampled points correspond spatially on the three separate records, the use of such techniques as crosscorrelation for granularity analysis is eliminated. The record alignment required in order that analytical filter densities (AFD) may be obtained from integral filter densities (IFD) is also difficult to accomplish. The importance of working with analytical densities is discussed in the following section. It must be assumed that the red, green, and blue records can be aligned and that AFD's can be used in image assessment; this dictates the use of a trichromatic micro- STATINTL densitometer. metry in general: present a necessary philosophy to color densito- "Mere possession of a good color densitometer is not sufficient. Even the best color densitometer will not be fully effective unless it is used with a complete understanding of its limitations and the care that is necessary to realize its full capabilities. " This report represents a summary of the theoretical routes that may be taken in developing a color image assessment capability similar to presently existing black- and-white capabilities. Many procedures used in black-and-white image assessment have been retained, others changed or broadened, and some new concepts added. Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 SPECTRAL PROPERTIES OF COLOR AND COLOR MATERIALS A. PROPERTIES OF GROUPS Color photography has its basis in the laws of colorimetry. If it can be shown that a set of colors, under the operation of addition or mixing, forms a group, then certain mathematical procedures applicable to groups may be performed6 . The basic group requirements that must be met are: (1) closure, (2) associativity, (3) an identity element, (4) an inverse. If a fifth condition of commutativity is maintained, the set of colors will form anAbelian group under the operation of addition. 1. Closure C1iC2,,C3,...Ci,... be a field of colors. The rules of closure state that: in a given field, there is an element that exists that is the result of an operation of one element on another, i. e. , C1 + C2 = C3 The experiments of Maxwell confirm that: given any two colors, there is a third color that is the sum of the pair. 2. Associativity The results of the operation must be identical, independent of the manner of grouping: (Cl + C2) + C3 = C1 + (C2 + C3) Whether we add the first two of three colors together, then add the third; or add the first to the sum of the last two, the result is the same. 3. Identity Element The existence of an identity element means that the operation of this element upon any other element in the field results in no change in the element operated upon: Ci + I = Ci In colorimetry, the identity element I is termed a neutral. 3 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 4. Inverse If the inverse of an element operates upon that element, the result is the identity ci + Ci-' = I In colorimetry, the inverse is termed the complementary color. Hence, colors form a group under the operation of addition. 5. Commutativity The order of operation of one element upon another must not affect the result: Ci + C; = C1 + Ci The order of addition is of no importance for nonfluorescent colors. Therefore, nonfluorescent colors meet the requirements of anAbelian group for addition or mixing. B. INTEGRAL AND ANALYTICAL DENSITIES These findings are of significance for they allow the defining of spectrophotometric properties of dyes in terms of an N -dimensional space and, thereby, allow the genera- tion of critical tests that color materials must meet if image assessment techniques are to be applied. Figure 1 is a plot of the spectral density curves of the cyan, magenta, and yellow dyes of a typical color material. By adding the densities of these dyes (at 10 milli- micron intervals) the upper integral density curve may be generated. If a densitometer were used to read the red, green, and blue densities of this integral tripack, it would be determining not only the major density contribution of the dye having maximum absorption in the waveband being measured, but also the minor contribution to the total density of the other two dyes. Obviously, the total blue density, Db , is a sum of the densities of primarily the yellow dye, as well as the magenta and cyan dyes to a lesser extent. Thus: Db = all Y + alb M + a13 C (1) The individual terms of the equation can be written explicitly because of Beer's law, which states that the narrow-band, or spectral, density of a dye is directly pro- 4 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 Figure 1. Dye Spectral Density Curves of Transparency Material 500 540 580 Wavelength, A mp STATINTL protional to the concentration of the dye, i. e. , spectral density of cyan dye = aA Y where Y is the dye concentration and aA is termed the spectral absorption coefficient at wavelength k. . For spectral or narrow-band densitometry, Beer's law holds; and Equation (1) may be written as the sum of the absorption coefficients ai3 of the particular dye. In this case the subscript i denotes the color being measured; j denotes the dye with which the absorption coefficient is associated. Similar equations may be written for the green DD and red Dr densities: a.-1 Y + a22 M + ae3 . C a31 Y + a33 M + a33 C By arranging these three equations into a matrix, one finds that Dr , Dg , and Db may be expressed as a multiplication of a column vector of C , M, and Y concen- Approved For Release 2005/02/10 5 CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 tration elements by a 3 x 3 order matrix of absorption coefficients: Dh all are a13 Y (4) DD = a 21 a 22 a 23 M Dr a31 a32 a33 Ci By writing the absorption coefficient matrix as A, the equation becomes Db r Dg A Y M (5) L Dr C If the elements of the density matrix Dr , D, , Db are measured with narrow- band filters, they are termed integral filter densities (IFD) ; if measured on a spectral densitometer or converted from spectrophotometric measurements to density, they are termed integral spectral densities (ISD). The elements of the YMC dye matrix are concentrations or densities of individual dyes; hence they are termed analytical densities. The terminology becomes analytical filter densities (AFD) or analytical spectral densities (ASD), with filter and spectral having the same meaning as before. Integral filter densities are the most common measurements and are easily obtained. Analytical densities are impossible to measure directly on imagery without physical destruction of the image. However, analytical densities may be calculated from inte- gral densities if the inverse of the absorption coefficient matrix is computed: Y Db M = A-1 ? D9 C Dr (6) Before the description of methods for obtaining the absorption coefficient matrix is undertaken, the necessity of working with analytical densities will be explained. Let us assume that a trichromatic scan of an edge is performed, and the red record is taken through an appropriate dynamic transfer curve to yield effective exposure values. If the modulation transfer function (MTF) is computed for this red record, it essen- tially has no meaning,since it is the MTF of the cyan dye layer operated upon in some manner by the MTF of the magenta and yellow layers because of the dye absorption bands in the red of these latter two dyes. The manner in which dye cross absorptions, such as these, affect the MTF is not known. Therefore, at the present time the trans- Approved For Release 2005/02/10 PCIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 form of a red microdensity record has no meaning since no knowledge is gained con- cerning the emulsion by computing such a transform. If the densities of the red records are mapped using Equation (6) to obtain cyan, magenta, and yellow dye concentration or densities, then the resulting MTF will describe the spatial frequency response of the red-sensitive, cyan dye forming layer only. In this case, something is now known con- cerning a specific layer in the emulsion. If, at a later time, one learns how one layer of a subtractive color system operates upon another layer in terms of spatial frequency response through the complex arrangement of sensitivity crossover and dye crossover, then perhaps meaningful information may be obtained by transforming integral density records. However, in the initial stages the image assessment work will be accomplished by using analytical densities. Three methods may be utilized in obtaining the absorption coefficients; all three represent various methods of gaining access to one dye layer of the emulsion. (1) The dye layers may be consecutively removed by gelatin-eating bacteria; (2) the emulsion may be separately coated; or (3) the emulsion layers may be isolated by exposure. Each method presents its inherent difficulty. In the operational case the most feasible method involves exposing two layers of the reversal emulsion, leaving only the one layer of interest unexposed. Obviously, if a wedge is then exposed in the remaining layer using white light, a step wedge modulation of the dye formed in that layer will be obtained. This has been accomplished for three films: SO-151, 8442, and SO-155. The results are listed in Appendix A. Each of the single dye layers is read on the densitometer or microdensitiometer for which the matrix A is to provide IFD-to-AFD mapping. It is read for each of the color filters that is to be used in reading or scanning the imagery. This yields three sensitiometric curves for each dye layer: one set of major density values is generated when the dye layer is read with the filter that is its complement; the other two sets of densities are generated when the layer is read with the two remaining filters. A plot of the minor densities, determined with the latter two filters, as a function of major density is generated for each of the dye layers. The absorption coefficients of the major densities fall on the main diagonal of the absorption matrix and are all unity (a? - a-2 - a33 =1.00). The secondary absorption coefficients are determined from the slope of the line formed Approved For Release 2005/02/10 : G A-RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 when a minor density is plotted as a function of the major density. The linearity of this plot confirms the validity of Beer's law. If a straight line is not obtained when minor densities are plotted as a function of major densities, it is an indication that Beer's law is not valid. The reasons for Beer's law failure may be several; for example, the density contribution may not have been reduced to zero through preexposure, or densitometer problems may be the cause. However, when a straight line is obtained, the slope of this line is the corresponding cross absorption coefficient. Figure 2 is a specific example for the yellow dye layer of SO-155. The cross absorption of the yellow dye to red and green light has been plotted as a function of the blue light density. The absorption coefficient all = 1.00 . From the graph, the slope of the straight line for green density as the dependent variable is a21 = 0.12 and for red plotted as a minor density the absorption coefficient is a ,1 = 0.02 . These relation- ships, and therefore the absorption coefficients, are valid only on the densitometer and filters, used to determine the IFD's (in this case a filters). In this case the complete absorption coefficient matrix for SO-155 is I 1.00 0.21 0.11 0.12 1.00 0.15 0.04 0.17 1.00 0.8 U, 0 0.4 0 DD = 0.43 N DD = 0.12 Dr = 0.30 --- 4 Db = 1.00 . Major Density, Db Dr = 0.34 Figure 2. Minor Density as a Function of Major Density; Emulsion 155-16-32 STATINTL Approved For Release 2005/02/$t : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 1.0276 -0.2017 -0.0827 A` -0.1202 1.049 8 -0.1442 -0.0206 -0.1704 1.0279 Let us assume the blue, green, and red densities for SO-155 in a particular instance are 0. 24, 0. 56, and 0, 39 respectively. Solving for the yellow, magenta, and cyan dye concentrations becomes a matrix multiplication problem: Y 1.0276 -0.2017 -0.0827 ] . [ 0.24 L M = -0.1202 1.0498 -0.1442 0.56 C -0.0206 -0.1704 1.0279 0.39 Y = 1.0276 ( 0.24) - 0.2017 ( 0.56) - 0.0827 ( 0.39) = 0.10 M = -0.1202 (0.24) + 1.0498 (0.56) - 0.1442 ( 0.39) = 0.50 C = -0.0206 ( 0.24) - 0.1704 (0.56) + 1.0279 ( 0.39) = 0.30 The same principle is used to calibrate a trichromatic color microdensitometer. A microstep wedge is produced separately in each of the single dye layers. These microstep wedges are scanned and the red, green, and blue microdensities of each step are averaged. The minor densities for each dye layer are plotted as a function of the major densities. The slopes of the resulting straight lines (if Beer's law holds) are the elements of the absorption matrix. The inverse of the matrix is taken, thus yielding the mapping matrix of integral filter microdensities (IFMD) to analytical filter microdensities (AFMD). Emphasis is placed on the validity of Beer's law because of the necessity of using mathematical models in building an image assessment procedure. If Beer's law is not valid, then models based on the linear additive properties of dye layers are not valid. Image assessment of color materials includes colorimetric assessment of the dye- forming system. It has been shown that colorimetric procedures for nonfluorescent color meet group requirements. This fact may now be utilized in testing the interrela- tionships between the dyes. 9 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 A spectrophotometric curve for a given dye is generated by reading the transmission of the dye as a function of wavelength, generally in 10 m? intervals. It is assumed that the measurement intervals are independent and are, therefore, orthogonal. If this assumption is validated by the bandwidth of the measuring equipment, then a unit vector xi may be defined at each measurement interval (i. e. , every 10m? over some wave- length closed domain, say 380 < A 1 6 . c 1.6 0 1.2 0 1.2 U 0 8 . as 0.8 CL N a h 0.0 h-- ---- L-- --- "-g 1\3 "2 Wove length Wavelength Figure 4b. Two Block Dye System That Does Not Obey Beer's Law Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 Figure 5. Angular Relationship of Dye Vectors Approved For Release 2005/02/10: CIORDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 2.0 a U 0.8 0 a 0.4 I-T Wavelength, A m? Yellow Dye Layer 151-23-32 Magenta Dye Layer 151-23-32 460 540 620 700 Wavelength, A m? Cyan Dye Layer 151-23-32 Wavelength, A m? Figure 6. Spectral Density Curves Approved For Release 2005/02140 : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 n {{ Fb = !hz (16) where f are the wavelength-dependent logarithmic output values for a nonspectral absorbing sample in the scanning plane of the microdensitometer. Thus, for a micro- densitometer to be used for color image assessment, the following condition must be met in terms of direction cosines: Fr ? Fg - F, - Fb F, . Fb ~Frl IFj IFr1 IFbI JFJ jFbI = 0 (17) Approved For Release 2005/02/10 : Cik. RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 (This page is intentionally left blank. ) Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 AVERAGING OF MICRODENSITOMETER RECORDS A. NECESSITY OF GAUSSIAN ASSUMPTIONS The scanning of color film samples with a small diameter spot, or a slit of small width, generates a trichromatic record of densities with a significant noise variance. Conversion of the IFD record to an AFD record retains the noise variance but modifies its characteristics as described in the following section. To determine the density level of each layer being scanned, the obvious method is to utilize a simple averaging scheme based on a Gaussian process. In working with black-and-white material, evi- dence has been presented that the distribution of noise in both density and transmittance is not Gaussian. However, the distributions are not greatly skewed about the mean; hence, a Gaussian assumption may be a good approximation. 7 There is an obvious difference between mean density and mean transmittance of the sample since ~ logo (1/) (18) For a microdensitometer operating in a digital mode, the average density corre- sponds to the left side of Equation (18) and is obtained by computation of the mean of the record. Generally, the photometric large area densitometer determines a spatial transmittance average corresponding to the right side of Equation (18), which is then displayed as density.' The significance of this inequality for color material and the microdensity distri- bution characteristics have not been reported. Until such information becomes avail- able, it will be necessary to compute the average density of a sample using Gaussian assumptions. It is desirable that the average density of an analytical trichromatic record be determined in an automatic and non-arbitrary manner. B. CALCULATING THE GAUSSIAN MEAN AND STANDARD DEVIATION Let the open domain of analytical filter microdensities (AFMD) be expressed as 0 :< Di _< 4.00, (i = 1, 2, 3, ..., r) the density space being expressible by all densities in the domain that can be grouped in cell interval of width A . In practice, the recording Approved For Release 2005/02/10 : Cl -RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 precision is two decimal digits; thus, the cell interval is A = 0. 01 and r = 400, yielding an upper density limit of 4. 00. If an analytical microdensity record of N densities is computed for one dye layer from the IFMD for the tripack, there are two ways the Gaussian mean and standard deviation may be calculated. The most direct method is by averaging the sample and computing the standard deviation by the usual sum of squares technique. The second method retains the actual distribution characteristics of the record by formation of a frequency histogram. The abscissa of the histogram is the previously defined density space arranged from 0 to 4. 00 in cell intervals of A = 0. 01. The ordinate of the histo- gram is the frequency fi with which a specific density level Di is found within the record. After formation of the histogram, the least and greatest cell values for which there are entries are determined, and the median cell between these two extremes is com- puted as DM . The cell values of the histogram are next renumbered with integers, li , taking the median entry D. as the origin; the renumeration goes positive with increasing density and negative for densities less than the median (Figure 7). Di = DM li = 0 Di < DM l i < 0 Di>DM l;>0 The mean and standard deviation may now be computed from the histogram by the following two equations, respectively: = DM + (A/N) E fi li A {i1N f~:li2 i = 0 fi li )2J /[N(N-1)] '1 i = o (19) (20) The histogram retains the distribution properties of the sample and allows rejec- tion of all anomalous samples that fail to satisfy a criterion such as: I id then fi = 0 (21) Approved For Release 2005/021010 : CIA-RDP78BO4747AO01100020006-2 rt t t 1 11. t 1 t t t t. i k .Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 D1 .01 D5 .05 .10 .12 1.35 -8 -6 D140 1.40 D 1 -4 -2 0 D 150 D,?90 1.50 3.90 Figure 7. Example of Density Frequency Histogram Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 D395 3.95 rTy D400 ni 4.00 Density Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 This eliminates all large density fluctuations that may be due to dirt particles, emul- sion scratches, and other defects. The alpha risk taken in performing this rejection, at 3. 5 times the standard devia- tion from the mean, is small, as are the consequences of the risk. The mean and stan- dard deviation, as expressed by Equations (19) and (20), are recomputed on the modified frequency histogram. In this case the modified sample size N'is used, where: fz - E; i = m2 M 1 (DM - 3.5 s) 100 nn2 _ (P, + 3.5s ) 100 (22) Use of the histogram method also allows computation of the mean transmittance of the standard deviation of the transmittance by the following relations: _ (1/N') f~ exp (-2.30 D,,) (23) n 2 N' f, exp (-4.60 Di)- fi exp (-2.30 ) 1z) = a z= o / [N'(N- 1) 1' (24) The density corresponding to the mean transmittance may be then computed as D = logro (1/) (25) Microdensitometry does not concern itself with constant density records but rather with imagery, step wedge, and, in general, records in which different density levels exist. The ensemble averaging concept must be applied so that changes in density levels may be detected. Since the density sample rate and the approximate dimension of the smallest object to be detected are known variables, this allows the selection of a subsample of densities ni from the total record N . The histogram technique is used for the determination Approved For Release 2005/02/2120 : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 of the AFMD subsample mean Dj and standard deviation s j (or variance sj ). To detect changes in density level or in standard deviation, it is necessary to define an ensemble average and variance 91.i and sej as running values determined by pooling past subsample values that are of the same population. Initially, a subsample mean and variance are computed for the first subsample (j = 1). The next mean and variance are computed for the record sample (j = 2) and compared to the initial values, which are taken to be the ensemble parameters. If the just-computed values are the same as the ensemble values, then standard pooling tech- niques are used. The new ensemble average becomes Dej+I = (nej De. + nj + I Di + I )/(nej + nj + I ) where the new ensemble sample size is nej + 1 nej + nj + I s7 + 1 = [(nej - 1) s~ + (nj + I - 1) S + 1~ / (nej + nj + 1 - 2 ) (26) (27) (28) The pooling procedures are identical in transmittance values. The criterion for deter- mining if the subsample average differs from the ensemble average, or if the subsample variance differs from the variance of the ensemble, is based on normal statistical test procedures for a Gaussian-distributed population. The test procedure requires that an F-test be performed on the variance of the sub- sample, as compared to the ensemble variance. The null hypothesis in this case is that the ensemble and subsample variances are equal: 2 H 2 p : Qe j = The alternative is that an inequality exists: Qj + 1 (29) Hr : ae2 j ~ 2 of + (30) The F-ratio formed is subject to the following constraints: 23 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 paal - Sej /S+ 1 Sjf + 1 /SFe a l = e j The critical F-value may be selected from tabulated values' and is based on the degrees of freedom of each variance and the alpha risk desired. Alternatively, the alpha risk incurred with the rejection of the null hypothesis, for any computed F-value, may be computed from the equations given in Appendix B. This procedure is more amenable to computer operation. If the variances can be taken to be equal, then they are pooled by using Equation (28), provided the mean density level has not shifted. A shift in density level is detectable using a calculated T-distribution value: Tcal = (Dej - D j + 1 ) { ~ne, - 1 / ) ? s + (nj+ 1 - 1) 8i2+ 1 1 / (n,,; + nj +1 - 2) iz X [ (1/n,, ) + (+ 11 + l ) ]-`z (31) with v := n,, + n,+ 1 - 2 degrees of freedom. The best procedure in running this test is to compute the alpha risk associated with T,.,LI and v (Appendix B) and compare the computed risk value with the acceptable risk. The null hypothesis in this case is that the two means are the same: 110 : 11ej = ?j + i The alternative is that the mean density level has shifted: HI : Fte, ~ ?j + i (33) If both the mean and variance tests indicate no change between the ensemble and the subsample, then the pooling of both the variance and mean density is allowable 24 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 to form a revised estimate of the ensemble average. If either the variance or mean density of a subsample is significantly different from the ensemble values, then the ensemble values are set aside (stored, printed out, etc.) and the new ensemble average is taken as the subsample parameters just com- puted, i. e. , or Pei ~ 11j + I Del+1 Di +I 2 Se7 +1 _ S7 +1 and the subsample averaging and variance computation and comparisons are carried out using the next subsample j + 2. This procedure essentially "walks through" the entire record and detects all shifts in mean and variance and sets aside the ensemble average and variance for any stationary ensemble. Obviously, if there is a monotonic trend in density level or variance throughout the record, then each subsample will differ from the previous one, and no ensemble value with a large degree of freedom will be found. This procedure may be used in the determination of RMS granularity, as will be explained in the next section. Since trichromatic records are involved here, this procedure must be accomplished for each of the dye layers. A detection of density or variance shift in any one or two dye layers, or differential shifts between dye layers, indicates that a change in hue has been encountered. To detect hue shifts requires that all three dye layers be entered into separate histograms on an individual spatial trichromatic sample basis (the tri- chromatic values must first be converted from IFMD to AFMD). If one or two layers shift in density, then a hue shift has occurred. If shifts occur in all three layers, a hue shift or a neutral density shift may have occurred. If no shift occurs in any of the three layers, then no hue shift has occurred. The necessity and explicit method of detecting hue shifts within a density record will be explained in Section V. 25 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 (This page is intentionally left blank. ) 26 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 Processing a negative or positive black-and-white material produces particles of essentially opaque silver. The growth of these silver particles and their form, spatial constraints, and filamentary construction are determined by the gelatin environment and the conditions and type of development. Since (1) the grains are individually opaque, (2) the grains are small with respect to the diameter of the scanning aperture, and (3) the grains are randomly distributed, then Selwyn's law is obeyed. This law states that for a given material at a given density the product of the standard deviation of the density (D) and the scanning aperture diameter d,L is a constant, i. e. , a(D) ? dp = G (34) . where G = Selwyn's granularity constant. (A plot of this relation for two typical black- and-white materials appears in Figure 8.) This permits computation of the RMS gran- ularity of a material for any given scanning aperture once G is obtained. To realize the full usefulness of this relation, granularity - a purely objective, numerical measure of noise - must be related to the subjective measure of noise: graininess. Stulty and Zweig10 stated this relationship by defining the viewing magnification, V., under which the material was to be viewed and the effective point spread function of the eye. The result is the simple computation of the aperture with which the material must be scanned in order to obtain a measure of granularity that best corresponds to graininess. This relationship dli 513 Vm (35) is valid whether or not Selwyn's law holds. (In Equation (35) du is the required scan- ning aperture in microns. ) Positive or negative dye-forming systems, based on a silver halide as the photore- ceptor, form a dye image around the silver developed in the color developer stage. Since the dye formation is a coupling reaction with the oxidized developing agent, 27 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 3 4 5 10 20 30 40 50 Scanning Spot Diameter, dt, (microns) Figure 8. Selwyn's Relation for Two Black-and-White Materials Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 4 1 1 1 1 1 1 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 the dye is formed in the vicinity of the grain being developed although obviously it can- not be formed in the exact location. This fact, plus diffusion of the oxidized develop- ing agent away from the reaction site, means that the image-forming unit in modern color materials is a cloud of dye formed around the image silver. Of course, the bleaching of silver leaves only the dye. Because of the diffusion condition, the assump- tion of randomness of the image-forming units cannot be made. Because of the failure of its basic assumption, Selwyn's law does not hold in the case of dye image-forming systems" . The relation between a (D) and d? takes the form shown in Figure 9. Since this means that the granularity of color materials cannot be computed, it there- fore must be measured by using the aperture that will best simulate the effective aper- ture properties of the system in which the material will be used (for human interpre- tation see Equation (35)). There is some question concerning the validity of Equation (35) in color materials since the fundamental unit visualized as grain is not a funda- mental granular unit but may be an agglomeration of dye clouds 12 . Because of the transparency of the dyes, the agglomeration is not necessarily confined to dyes in one layer of the emulsion but may be dye clouds in other layers (Figure 10). Because of the possible spatial superposition of dye units in different layers of the film and because of the dye cross absorption, it is actually misleading to express gran- ularity in terms of red, green, and blue densities. The ensemble averaging methods, explained in the last section, will actually yield the RMS granularity, a (D), as output. It is the simple standard density deviation of a constant density sample of sample size Ne 5000. In other words, to adequately estimate the RMS granularity of a material the sample size must be at least 5000. If each density sample is taken through the mapping function A-1 (see Equation 6) to obtain analytical filter microdensities (AFMD), then three analytical RMS granularity values - namely a (C) , a (M) , and a (Y) - are determined in place of the integral RMS granularity values a (Dr) , a (D9) , and a (Db) . The latter values contain errors due to cross absorption of underlying dye clouds, as just explained. Using AFMD conver- sion of each density sample, before computation of the RMS granularity, allows the noise to be attributed to the proper layer of the emulsion. To recognize the significance of this, the use of autocorrelation and cross correlation functions in noise measurement must be discussed. Approved For Release 2005/02/10 : C142RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 0.05 1 0.04 Note : Both materials developed to same neutral density and traced with a black-and-white microdensitometer. Scanning Spot Diameter, du (microns) Figure 9. RMS Granularity vs Scanning Spot Diameter for Two Color Materials Approved For Release 2005/O2/q 0 : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 Blue - Sensitive Layer Green - Sensitive Layer Red - Sensitive Layer Ii Dye Cloud Yellow Dye Magenta Dye Cyan Dye O C~ A Ll1 nn A P f A - R-.. A n n Figure 10. Differences Between Integral and Analytical Noise Records Approved For Release 2005/02/10 : CIA IRDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 Consider two continuous density records as a function of distance, namely f, (x) and f2 (x) . The autocorrelation function of either of these records is defined as Prr (r) = T lira fe (x) /I (x+ r)dx (36) The cross correlation of these two records, i. e. , the correlation of the first with the second,is (x)f (x+ r dx f f 37 , 2 ( ) P21 (r) = Jim_ T T. 1 2T f r (x) f, (x+r)dx (38) P 12 (-r) = P21 (r) (39) Equivalent information results from use of auto and cross correlation functions as from a determination of the RMS granularity as a function of aperture diameter '?' However, the correlation method allows easier visualization of the influence of the individual components of the photographic system on granularity. Explaining the inter- pretation of correlation functions requires the definition of the power spectral density of the noise, i. e. , the Fourier transform of the autocorrelation function: 0o T Pit (.) = lim f 1 f fr (x) fr (x T , - __ 27 T f Prr (r) exp (-j a) r) dr + r) exp (-ja) r) dx dr (40) Approved For Release 2005/02M 0 : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 P11 (r) = 1 J Prr (a) )exp(jc) r)da) (41) 2rr -o giving the transform pair P.rr (r r)P1j GO (42) The same definition exists for the cross power density spectrum: P12 ((D ) lim ~~ T-?? -. 2T T J. (43) Pty (r) = 1 f P12(o)exp(jc)7)d6i (44) 2rr -- yielding the transform pair P12 (r)-P12 (co) (45) No great physical significance can be associated with the autocorrelation formula other than it indicates the likelihood of correlation between the function at fi (x) with a value of the function fi (x + 7)at the location x + r . Of course, when r = 0 , the correlation should be perfect since P11 (0) = lim T -- x) 12 (x + r) exp (-ja) r) dx d7- ( r) exp ( -jw r) dr 1 r /__\r I_ \, lim 1 .0, ,. f which is a maximum. Of course, correlation should be expected throughout the interval r < d in other words, when the lag variable r is less than the aperture diameter. The reason for this is that the aperture is of finite width, and several points on the emul- sion may appear in the aperture at one time's . These effects can be seen in the corre- lation function for a typical black-and-white emulsion in Figure 11. It has beeP2( 1V's Review by T Approved For Release 2005/02/10: Cl -RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 Spot Diameter Scanning Spot Size =: 2.0 microns Correlation Distance or Lag, r (microns ) Figure 11. Typical Autocorrelation Function for Black-and-White Material at a Given Density Level observation" that the autocorrelation function of a print equals the autocorrelation of the positive stock plus the autocorrelation of the negative stock, as modified by the modulation transfer characteristics of the printer. The transfer of granular noise in black-and-white materials can best be visualized by use of the power spectral density function (Wiener spectrum). A hypothetical example of this function for a coarse- and fine-grain emulsion, and a print of the former on the latter, is shown in Figure 12. Material A Print of A on B 2 3 4 5 10 20 30 40 50 100 Spatial Frequency, w (cycles/mm) Figure 12. Power Spectral Density Functions for Black-and-White Materials Approved For Release 2005/0 f l0 : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 The falloff of the function at the higher frequencies is due to the filtering effect of the aperture. Doerner16 derived the relation for the determination of the Wiener spectrum for a print P (wj D) , as a function of the gamma y to which the positive material is developed, the Wiener spectrum of the positive material PP ((Oj D) and original negative material PN (wj D) and the combined modulation transfer function of the negative material and the printer I M (") ) I : P r (w ; D ) = P N (w ; D ) [y I M (w )I ]2 + PP (w ; D) (47) Obviously density, D , must be introduced as a parameter since the Wiener spectra of the materials and the print are dependent upon the density level. This type of granularity transfer analysis is important from the standpoint of the determination of noise propagation characteristics through printing or reproduction systems. 1. Autocorrelation Published research' , 18, 19, 20 does not deal directly with the noise pro- pagation of color reproduction systems. It does not even deal satisfactorily with the color noise analysis of camera original materials. It is, therefore, necessary to initi- ate color image noise assessment techniques for camera original and reproduction materials. The first step is the examination of autocorrelation techniques for individual dye layers of the color emulsion. In terms of analytical filter microdensity records, the autocorrelation function may be written for each of the three dye layers: yellow (r) lim Py~ _ T-4 ~ 1 2T fT Y(x) Y(x+r)dx (48) magenta (r) lim Pmm = T T 1 f M(x)M(x+r)dx 2T T (49) (r) lim Pow = T ~m T 1 fC(x)C(x+1)dx (50) 2T fT Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 In addition, six cross correlation functions may be written. First the cross corre- lation of the noise record of the yellow layer with that of the magenta layer: T Pym. (r) = lim Y (x) M (x + r) dx (5t) 2T T and similarly the yellow layer cross correlated with the cyan layer: Py? (7) (the cyan record contains the lag variable); and the magenta layer cross correlated with the cyan layer: Prc (r) . The three remaining cross correlation functions are the same as the above three except that the other AFMD record contains the lag variable, i. e. , r Pay = 7f M(x)Y(x+r) da 2T T From Equation (39) it follows that It will be standard procedure in this report to express the correlation function such that the lower of the two dye layers contains the lag variable. When this cannot be accom- plished, the notation of Equation (53) will be utilized. Then the remaining two correla- tion functions are f', ,r (r) = Py oo (v,axx(i)/x(i) x(1))~a X(i) = Ar B(') = V(') (97) (98) This means that the sum of the squares of the elements of V (J) equals A, since B(l)'B(l) = 1 (99) Using Simond's notation, the modified covariance matrix S2 for the computation of the second characteristic vector is S2 = S - V(l) V(l), (100) The finite number of characteristic vectors (each a 400 x 1 array) extracted from S may be arrayed to form a character matrix V . An example of this procedure is given in Appendix F. The physical significance associated with the characteristic matrix is that each 400 x 1 characteristic vector comprising the matrix describes a "principal source" of variance of a sample exposure table from the neutral exposure table. Any exposure table in the group of sample exposure tables may be regenerated by adding together Approved For Release 2005/02/10 : 6IA-RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 certain multiples of the characteristic vectors. This is equivalent to stating that a particular scalar multiple y, , 1 = 1, 2, 3, ... , p (where p is the number of charac- teristic vectors) of the characteristic vector V(1) plus the amount yet + r) of vector V 0 + 1) will, when added to the neutral exposure table, generate a perturbed sample exposure table. Thus, the set E, may be regenerated by the simple matrix equation E,. = V, Y, + E,~ (101) where Y is the p x 1 array of scalar multiples. (Note: Subscript c denotes the equa- tion representing the exposure table regeneration for the cyan dye. ) Equation (101) is the key to the exposure table regeneration routine. If the array of scalars Y can be determined as a function of dominant wavelength and purity of the image then the correct exposure table can be generated and the effective exposure concept retained in color microdensitometry. Obviously the scalar multiples must be determined as a function of the analytical densities Y , M , and C . This may be accomplished by regression techniques, which implies that a sample of scalar multiples must be generated. This,in turn, may be readily accomplished by defining the weighting values W from the characteristic matrix. As stated by Simonds W V B (a) /Air From (101), then, W, (E, - E~, ) (102) (103) Through regression analysis, the scalar multiples Vi, 1 = 1, 3, ... , p may be related to the Y , M , and C analytical dye densities by determination of the coefficients 2j ,, j = 0, 1, 2, ... , 9 of the following equation: 2 pZ + 21 Z Y + 221 M + 231 C + 2k 1 M/Y + 25, Y/C (104) 1 261 C/M + 271 Y2/MC + 28, M2/YC + 291 C2/YM Once V, , Vm, , V? , and the set of coefficients for determining scalar multiples (namely 2;:, 2;1,n, 2;1v , l = 1, 2, 3, ... , p , where p = the number of charac- Approved For Release 2005/02f1% : CIA-RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 teristic vectors in each V) have been established, the calibration procedure is completed. The operational system for the generation of the correct set of effective exposure tables is presented in the flowchart in Figure 19. Knowledge of the emulsion type and processing conditions allows the selection of the appropriate data base from which the system works. This data base consists of, first, the characteristic matrices for each of the analytical dye layers: V, for the cyan or red sensitive layer, V,n and V,, for the magenta and yellow layers, respectively. Each of the matrices is composed of p characteristic vectors, each characteristic vector being a 400 x 1 array of values. Thus, each characteristic matrix is of dimen- sion 400 x p . Secondly, the coefficients for scalar multiple computation (Equation (104)) are required. There are nine coefficients for each equation and p equations for each characteristic matrix. The system neutral wedge analytical microdensities, representing the sensito- metric characteristics of the particular emulsion batch in use, are used to compute the set of neutral exposure tables Eon Ern , Ez,,n by the standard curve fit and inversion procedure. Once this information is known, the system is ready to operate with image microdensity records. Incoming integral microdensities (IFMD) are converted to analytical microdensities (AFMD) through Equation (6). The resulting Y , M , C densities are used to deter- mine the scalar multiples from the set of equations represented by (104), using the coefficients as described above. This computation results in three matrices of scalar multiples: Y0 , Y?L , and Y? , each of dimension p x 1 . Each exposure table is then regenerated, the cyan exposure table by (101) and the magenta and yellow tables, respectively, by E, = Vm Y?, + Enzn, (105) k = V~, Y, + E,.,n, (106) 61 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 DETERMINE COLOR EMULSION TYPE AND PROCESSING CONDITIONS EXPOSE & PROCESS NEUTRAL WEDGE ON EMULSION BATCH USED A PROCESS WITH IMAGERY SCAN NEUTRAL WEDGE, ALONG WITH IMAGERY, WITH MICRO-D Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 UBROUTINE 0 oSEMBLE AVG. STEP AVERAGE DENSITIES OUTPUT GENERATE NEUTRAL EXP. TABLES FROM CRY STEP WEDGES BY CURVE FIT AND INVERSION COLOR EXPOSURE TABLE GENERA- N O CHARACTERISTIC VECTORS FOR GIVEN EMULSION d SPECIFIC PROCESS COEFFICIENTS FOR DETERMINATION OF SCALAR MULTIPLES FROM CMY DENSITIES NEUTRAL EXPOSURE TABLES VI/ ~Vm \yl `zYP MP K- I -- Et "Emn E(,n LOAD EXPOSURE TABLE GENERATOR INTO COMPUTER LOAD CHARACTERISTIC VECTOR DATA BASE LOAD COEF- FICIENTS FOR SCALAR MULTIPLE DETERMINATION FROM CMY DENSITIES LOAD NEUTRAL EXPOSURE TABLES FOR EMULSION BATCH TO BE USED INITIALIZE FIRST SET OF EXPOSURE TABLES ON ARBITRARY BASIS SUBROUTINE: CONVERSION OF RCB INTEGRAL TO CMY ANALYTICAL DENSITIES /15UTPUT'-, FFEC TIVE EXP. VALUES FOR EACH DYE A PER Figure 19. Exposure Table Generation System SOLVE MATRIX EOS. FOR NEW TABLES Em= VmYm+ Emn Ey=VyYy+Eyn Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 The regeneration of the exposure tables is thus based solely on the incoming image densities. Should the "color" of the image being processed change (a color change being any change except the effective addition of neutral density), then the correct set of exposure tables are generated. The procedure described allows generation of these tables in 1/1000 the time required to generate the exposure tables from a set of char- acteristic curves. One problem remains unsolved at this time: what is the criterion to be used to detect specifically when a new set of exposure tables should be generated? This cri- terion is very situation dependent insofar as its method of solution depends on the errors and risks that are allowable and the use to which the effective exposures will be placed. Visual measures based on the CIE MacAdam system and MacAdam units may be desirable, or a non-visual statistical detection method may be employed. The procedure of exposure table generation may possibly be applied to the genera- tion of the spectral signature of targets; however, no work has been performed along this line within this program. Approved For Release 2005/02/10 : CIM-DP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 1 1" (This page is intentionally left blank.) Approved For Release 2005/ 10 : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 SECTION VI MODULATION TRANSFER FUNCTIONS FOR COLOR MATERIALS A. INTRODUCTION Articles and information dealing with the theory and uses of modulation transfer functions abound in the literature and will not be discussed in detail within this report. The program, which has just been completed, devoted little time to the investiga- tion of color modulation transfer functions on an empirical basis. A few theoretical concepts were generated that are of importance when considering the modulation trans- fer function of color tripacks. These are described below. As already mentioned in Section V, the photographic system may be considered to be a linear process (point or line spread function) combined with a nonlinear process (dynamic transfer function). The modulation transfer function (MTF) allows descrip- tion of the linear process in terms of spatial frequency. It has also been mentioned that there is evidence that nonlinearities do exist in the amount of 3-8% distortion when the first three harmonics are considered. The cause of this apparent nonlinearity in black-and-white materials has not been investigated. It may result from inadequacies in the effective exposure concept, use of incorrect effective exposure tables, nonlin- earities inherent in the emulsion proper, or the microdensitometer. B. MODULATION TRANSFER FUNCTION GENERATION There are basically three methods by which the MTF of an emulsion may be evaluated. The first, and simplest in terms of computation, is to image sine waves directly on the emulsion", 38 . Since the exposure is known, the input modulation for a given frequency is computed as Min = (Emax - Emin)/(Emax + Emir ) (107) The modulation transfer factor is defined as the ratio of output modulation to input modulation and is a function of spatial frequency, co : Modulation transfer factor = Mout (w) / Min (w ) (108) ..r Approved For Release 2005/02/10 : Cl RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 This function, when normalized to unity at w = 0 , is termed the MTF. A second method of MTF generation is the utilization of an edge or step function exposed on the photographic material. Assume that a perfect edge can be exposed on the film, then the Fourier transform of the output edge derivative yields the impulse response function of the material. Of course, the output edge function H (x) is ex- pressed in terms of effective exposure. Normalization at W = 0 then yields the MTF: (109) MTF = G ((,,)/G (0) (110) Other methods involve the use of special functions which are imaged on the photo- graphic material. These functions are divided into two groups: continuous and dis- continuous. A sinc function is a prime example of the former, and the various bar targets are examples of the latter. Sinc functions 39 sine (x) = (sin x )lx have been acclaimed as an optimum target for the evaluation of the spatial frequency response of the photographic material. Problems exist, however, in the generation of this function as a continuous tone image; therefore, widespread use of this function has not occurred. Two types of bar targets are currently under investigation, the comb40? 41and the binary comb" . These targets are easily produced on photographic materials. However, to determine the MTF of the system the target transform must be removed from the Fourier transform of the photographic output. If HT (x) is the target function and Hr (x) is the resulting image function expressed in terms of effective exposure, then the Fourier transforms are simply GT (c~) HT (x) exp x)dx GI (w) = f Hr (x) exp (-jcox) dx (112) Approved For Release 2005/G10 : CIA-RDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 for the target and image functions, respectively. The normalized MTF of the photo- graphic material is MTF = G, (w)/GT (co) G (0) (113) The computation of the MTF is performed using effective exposures derived from the microdensity records. This, of course, assumes that the proper inverse dynamic transfer function or exposure table was used in converting from analytical microdensi- ties to exposure values. The application of modulation transfer functions to color tripacks introduces a significant complexity into their interpretation. Examples exist in which color MTF curves have been reported. Verbrugghe' has reported red, green, and blue integral modulation transfer functions for color materials. However, to go from integral MTF to analytical modulation transfer functions, at the present time, is not as easy as it is to obtain analytical Wiener noise spectra from integral data. This is because the sensi- tivity crossovers for the three layers are operating in the exposure-optical diffusion process and because the MTF curves are computed from effective exposure values rather than density values. It is suggested that in future programs the relation between integral and analytical modulation transfer functions be investigated from both an empirical and analytical standpoint. This research becomes essential once color photographic materials are used in the estimation of spectral signatures. Up to this time, a search of the literature reveals that consideration has only been given to the neutral modulation of color materials. However, from an operational standpoint this is almost a trivial case. There are several parameters that must be more fully understood than at present. Not only does the output modulation vary as a function of the input modulation, but the dominant wavelength and purity (or hue and chroma) of the input modulation must also be considered. For example, in an opera- tional situation the critical situation may be the detection of an edge generated by a Approved For Release 2005/02/10 : C1A7RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 green object on a greenish-brown background. Neutral modulation transfer functions convey, at present, no information concerning the detectability of this situation with a given material under given exposure conditions. The added dimension of the "color" of the target then becomes a nontrivial operational parameter which is extremely signi- ficant in the proper assessment of color imagery. Approved For Release 2005/0310 : CIA-RDP78BO4747AO01100020006-2 STATINTL Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 QUALITY CONTROL OF THE MICRODENSITOMETER STATINTL STATINTL 0 Techniques for the quality control of microdensitometers were developed at This study 4.4 resulted in a procedure requiring the existence of a computer facility and the development of a quality control target. It is a description of this program that is presented in this section. The fact that the procedure was developed for black-and-white microdensi- tometers is of no significance,as it may be adapted directly for trichromatic use. A neutral target must still be used because the high resolution quality control target can be produced to sufficient quality and stability only on black-and-white glass plates at the present time. This target would be traced, however, in a trichromatic mode and the trichromatic data analyzed to obtain quality control on each channel of the microdensitometer. B. IDEAL DEVELOPMENT OF QUALITY CONTROL SYSTEM In an ideal situation (one that conforms to theory), a quality control system would be established in accordance with the following sequence45. Establishment of Policy. A decision to establish a quality control system represents the initial desire for knowledge concerning the past, probable present, and probable future status of a process or instrument. Establishment of Objectives. In the second phaseythe goals of the quality control sys- tem are dictated. If possible, the level of performance that the completed control system is to achieve should be stated. Adoption of a Plan. The next logical step is to formulate and adopt a plan whereby the established objectives can be attained. (The establishment of a plan to meet the quality control objectives is the goal of this section. ) Organization. Organization to carry out the plan is accomplished in basically two phases: research and implementation. Research concerning the nature of the vari- Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 ables of microdensitometry and how these variables are reflected in a quality control measure is necessary prior to finalization and implementation of a quality control plan. Personnel Selection and Training. The selection and training of people to operate the system are, indeed, important phases in making a quality control system design an operational entity meeting the initial objectives. The operators must be sufficiently informed to maintain the quality control system, and they must be unbiased to the point that they will not force out-of-control conditions to in-control situations by arbitrarily resetting the limits. Motivation. Stimulating people to meet the planned objectives may become a large problem, especially if many people utilize an instrument which is monitored on a quality control basis. Rather than allow the quality control procedure to be handled by many or by whomever is utilizing the machine at the time, it is desirable to assign this task either to a single individual or to a department handling all such tasks. Reevaluation. Once established, the quality control system should not be abandoned, unless the system does not meet the planned objectives or unless the basic quality policy changes. Continued updating of expectations and control limits must be part of the system procedure. Reviewing the system against its objectives and attempting to correct its deficiencies are time consuming steps whose accomplishment may re- quire considerable control system background history. Nevertheless, the reevaluation of the system is necessary, not only to approach the final objectives of the program but also to streamline the system to an efficient procedure. C. GENERAL PROGRAM OBJECTIVES The establishment of a quality control system for a microdensitometer must be based on a meaningful measure of system performance, such that the information gained from the control system will be useful in the diagnosis of machine failures. This system must be designed to allow cross comparison of quality control informa- tion between machines, thus allowing relative calibration on this basis. The procedure for obtaining the basic (raw) control data must involve as little setup time and run time as possible. Likewise, mathematical computations or manipulations must be computer programmable for short throughput times. The output from the program must be Approved For Release 2005/d/1 0 : CIA-RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 readily interpretable in terms of the status of the system as well as the diagnosis of machine failure. In other words, the quality control system for the microdensitometer must operate with the utmost efficiency in order to generate a maximum of useful infor- mation with the minimum possible expenditure of energy in man-hours (training and running), microdensitometer time, computer time, etc. The following results are anticipated from the implementation of the proposed quality control system. 1. It will increase reliance on the data taken from a microdensitometer to which the control system has been rigorously applied,since the probable operational status of the instrument will be known at a time not remote from the time of measurement. 2. It will give assurance that data taken from any single microdensitometer may be mapped to correlate with data taken from the same input to a second microdensi- tometer, providing that the quality control system has been applied to both instruments and that both are in control. (This concept arises from a hypothesis that microdensi- tometers are not easily calibrated on an absolute density basis and that an ensemble average taken from a finite record is not directly relatable to the diffuse density value determined from a standard large area or macrodensitometer, except perhaps on an effective exposure basis. ) 3. It will establish routines for the diagnosis of causes of machine failures in situations considered out of control. In the evaluation of standard diffuse macrodensitometers, quality control efforts are generally concerned with maintaining the dc response of the instrument. In the general case, control information is gathered in three portions of the dynamic range of the instrument, i. e. , high, medium and low densities. Drifting of the instrument response can be detected by zeroing and recalibrating (rereading a "calibrated" step wedge or a series of selected points from a step wedge) periodically. The length of this calibration period is determined by the risk the operator wishes to take in the detection of short-term drift errors. Approved For Release 2005/02/10 : CIAIRDP78BO4747AO01100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 Similar dc problems disturb the world of microdensitometry, but in this case there is also a lateral, longitudinal, or rotational translation of the image during the measurement period. This gives rise to concern for the spatial frequency response characteristics of the microdensitometer. However, it is reasonable to assume that shifts in the spatial frequency response characteristics of the microdensitometer will be of a long term nature and will be caused either by improper operation of the instru- ment or by operational failure of the instrument. Shifts and changes in the spatial frequency response of the system may be detected, providing that any dc drifting is first detected and removed from the data. Given a specific image to be scanned, the drift of the instrument during the scanning period may be reasonably estimated by observing the initial dc calibration or setup points and then recalibrating at the end of the image scan. Observing the differences between the ini- tial and final calibration points yields an indication of the drift of the instrument over the measurement period. From these observations, a basic procedure may be evolved for collecting quality control information from a microdensitometer. The basic procedure encompasses an initial setup or scanning of a step wedge, so that the zero point and dynamic range of the instrument may be established. This may then be followed by the scanning of a target suitable for the measurement of the spatial frequency response characteristics of the instrument. Following this, a rescan of the step wedge or of a selected number of setup calibration points may be accomplished, thus providing a determination of the amount of dc drift in the instrument during the intervening time. (Short term instabil- ities would not be detected by this method but would be reflected in the spatial fre- quency response variations of the instrument.) If the drift interval is constant (i. e. , if the measurement interval At is constant), then a determination of the difference between the first and second dc calibrations will measure the average drift rate. This involves an assumption of a drift function that is linear with time. Estimation of the drift rate may be a trivial point, as any detectable dc shift during the measurement period is undesirable. In testing for the presence of dc drift, it is necessary to real- ize that such shifts may be detectable only on a statistical basis. The dc calibration of a microdensitometer is performed on an effective exposure Approved For Release 2005/O2'10 : CIA-RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 basis. This means that the establishment of the calibration curve for the microdensi- tometer is performed from a constant input, just prior to the scanning of the test target. Generally, this input consists of a step wedge of i = 1, 2, 3, ..., n discrete levels, such that the input function range is compatible with the dynamic range of the micro- densitometer. After the scanning of the "unknown" sample, the step wedge is again scanned. The data so determined are taken through the initial calibration curve, so that drift errors appear as effective exposure errors. Let represent the initial calibration value for the i th step. This is an ensemble average effective exposure taken over the i th step of finite width. After the scanning of the unknown sample, the step wedge is again scanned, and the effective input value for the ith step is again determined as . A correlated pair analysis" (paired observation analysis) may be performed upon the differences A = - . This type of analysis will permit the detection and estimation of the probable magnitude of any drift occurring during the measurement interval At . To perform this analysis, two parameters are computed: one is the average difference, d , across the n steps of the calibration wedge, n d A (114) The second parameter is the standard deviation of the differences across the cali- bration wedge En (A - a)E i=i n- (115) The main assumption in this case is that the values obtained for the average deviation estimates d are distributed normally about the true mean difference 8 . This being the case, from the above values a test statistic may be calculated which follows a student's T -distribution function with n - 1 degrees of freedom: TCAL = d (116) Sd In all cases, the null hypothesis Ho is that no drift 5 occurred during the interval At: Ho : 8 = 5o = 0 (117) Approved For Release 2005/02/10 : ClA DP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 The alternate hypothesis that must be accepted, if the null hypothesis is rejected, is that drifting of the instrument occurred over the interval in which the ac response char- acteristics of the microdensitometer were evaluated, i. e. , during the interval At II : 3 / 8r, (118) Rejection of H0 then indicates acceptance of the occurrence of a significant amount of drift during the estimation of the ac response characteristics of the instrument and brings into play the alpha risk taken when the null hypothesis is rejected. In this case, a rejection, or alpha error, occurs when a set of ac response data is rejected as con- taining microdensitometer drift when, in truth, no drifting occurred. In stating the rejection error or the specific alpha probability that would be acceptable, two factors come into play: the first of these concerns the alpha risk directly, and the second takes into account the allowable beta or acceptance risk. The two factors, considered together, determine the magnitude of the drift error that can be detected. The consequence of rejecting a set of data as containing microdensitometer drift, when actually it does not (alpha risk), requires the rescanning of the quality control target and a loss of man-hours, microdensitometer time, and a small amount of com- puter time. On the other hand, acceptance of a set of data containing drift (beta risk) could (1) indicate an out-of-control situation in the analysis of the ac response of the system, thus bringing into play the diagnostic program with the consequences of clos- ing down the system until the problem is diagnosed (the only actual machine error, in this case, being do drift); or (2) the drift problem could remain undetected, thus influencing production data; or (3) the machine could stabilize, and the drift problem could disappear in future time. The only data influenced in this case would be the ac quality control data. (As can be seen, the time of day when quality control data are gathered from the machine may influence the result obtained. ) In terms of consequences, the risk involved in accepting the existence of dc drift, when in truth there is none, is less than the risk involved in accepting data as being drift-free when, in truth, it is not. Thus, the acceptable alpha and beta risk proba- bilities may be set on a relative basis as a >_ a . Approved For Release 2005/002110 : CIA-RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78B04747A001100020006-2 E. FREQUENCY RESPONSE STABILITY The mention of quality control monitoring of the ac response characteristics of the microdensitometer system involves many implications and problems. The first of these is that it is, at best, an exceedingly difficult problem to assess the absolute fre- quency response of a microdensitometer in terms of spatial frequencies. However, by placing quality control restrictions upon the utilization of frequency response data, the problem becomes of lesser magnitude in that the stability of the response can be monitored without regard to the absolute frequency transfer function of the apparatus. The observation that spatial frequencies, when scanned, are mapped into temporal frequencies brings into consideration the flutter and wow idiosyncracies of the drive mechanism. Drive instabilities may be diagnosed through proper inspection of the quality control data. A possible error source exists in the ability of the operator to focus the instrument; if the focus is far from optimum, attentuation of the higher spatial frequencies results. This leads to questions concerning what optics and what slit dimensions or spot diameter should be utilized in the quality evaluation procedure. Since there are many possible combinations of slit size, spot size, scan speed, digital conversion rate, and chart velocity, quality control information obviously cannot be generated for all possible permutations. The alternative is a practical choice of one or a few conditions based on some criteria such as a median condition, a most often utilized situation, or an extreme condition that is likely to illustrate system problems with a high sensitivity. The method of approach to developing the basic diagnostic and quality control procedure is threefold. First, we must develop a method of relating, numerically, the information gained through frequency plane analysis of a specific target to the operational status of the microdensitometer. Ideally, this basic quality control mea- sure would be a single number reflecting the effects of all the critical parameters of the microdensitometer. Once a mathematical method of dealing with spatial frequency data, on a quality control basis, has been established, the second step then consists of applying this knowledge to the design of a specific quality control target configuration that will satisfy the demands of the mathematics of the quality control procedure. The Approved For Release 2005/02/10 : Cl RDP78B04747A001100020006-2 Approved For Release 2005/02/10 : CIA-RDP78BO4747AO01100020006-2 third step is the simulation of machine failures on a mathematical basis, resulting in the establishment of the diagnostic procedure to be utilized when the general quality control measure indicates an out-of-control situation. The basic quality control target will be a configuration that varies as some function of distance in the xy plane. It is desirable that the y domain of the target be so defined that to the microdensitometer it would appear that the configuration is constant in the y direction, that is, F (y) = constant for -- _ l ndc%) r 21, - it L n even) 77 1. Abramowitz, M., Stegun, I. A. Handbook of Mathematical Functions AMS55. Washing- ton, D. C. : Government Printing Office;(June, 1964). p. 948. A (Ti )= f TT (vIx)dx where T (vi x) = Student's distribution function v = degrees of freedom ITI = closed domain end point over which area is computed. This T-value is computed by the statistical T-test. a = the risk taken in rejecting the null hypothesis Ho . A (Tip) = the area under Student's T-distribution, bounded by -T _< x