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          資源介紹
          Image Processing
          in Computed Radiography
          Pieter Vuylsteke, Ph.D.
          Emile Schoeters, Ph.D.
          Agfa-Gevaert N.V.
          International Symposium on
          Computerized Tomography for Industrial Applications
          and Image Processing in Radiology
          Berlin, Germany
          March 15-17, 1999
          R&D Equipment
          2
          1. ABSTRACT 3
          2. INTRODUCTION 3
          3. CR IMAGE PROCESSING OVERVIEW 3
          4. IMAGE CONTRAST ENHANCEMENT 5
          4.A. Edge enhancement 5
          4.B. Dynamic range compression 7
          4.C. Multiscale contrast enhancement 7
          4.C.1. The multiscale representation 8
          4.C.2. Contrast equalization 10
          4.C.3. Frequency processing 12
          5. CONCLUSION 15
          6. ACKNOWLEDGMENTS 15
          7. REFERENCES 15
          3
          1. ABSTRACT
          This article starts with an overview of image processing techniques used in storage phosphor
          based Computed Radiography (CR) systems. Next it elaborates on a selection of image enhancement
          algorithms. Both the working principles and image quality issues are discussed. The main focus is on
          multiscale image enhancement, which has become state-of-the-art.
          2. INTRODUCTION
          Since the early days of CR technology developers have investigated solutions for bridging the
          gap between the very large dynamic range that characterizes the CR detector and the limited range of
          the output medium and viewing process. A considerable part of image processing functionality in
          current CR systems deals directly or indirectly with the issue of manipulating image contrast, in such
          a way that all relevant image features are rendered to an appropriate level of visibility, despite the
          restriction of viewing density range. CR equipment manufacturers have adopted basic image
          processing techniques, or they have developed dedicated solutions.
          With this article it is our aim to provide a better understanding of the essential image
          enhancement techniques of CR systems, what their purpose is, how they operate, and how they affect
          image quality.
          3. CR IMAGE PROCESSING OVERVIEW
          A simplified diagram of the image processing operations in current CR systems is depicted in
          Fig. 3.1. The ensemble of operations applied to the stream of image data could be roughly entitled
          ‘image enhancement’. The role of image processing functions within this data path is to improve the
          visual quality of the CR image in terms of spatial resolution, sharpness, contrast resolution, dynamic
          range, SNR. The processing efforts in the main path have to do with maximizing the information
          transfer to the viewer. The enhancement of image contrast is the main topic of this article and will be
          elaborated in section 4.
          The image processing operations are controlled by parameters, which often are assigned a
          value in accordance with the examination type. The predefined parameter values are stored in tables,
          with entries for each examination type. Specification of the examination type is done immediately
          before or after each exposure by means of an identification terminal, and hence is prone to human
          errors.
          In current CR systems some image processing functions are controlled by internal parameters
          which are derived from the actual image data. The parameter values are estimated by heuristic
          algorithms. This way the kind and degree of enhancement are adapted to the specific characteristics of
          the image in terms of density levels, dynamic range, noise level, or the presence of irrelevant regions
          like collimation borders. In most cases a reduced version of the original image is used as input for
          analysis, since this still contains the essential data for the task at hand. Although the final purpose of
          the analysis work is very similar among different equipment, most algorithms are proprietary, so that
          only little is published about their actual implementation.
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