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A description is given of a computer vision system, developed to serve as the front-end of a medical expert system, that automates visual feature identification for skin tumor evaluation. The general approach is to create different software modules that detect the presence or absence of critical features. Image analysis with artificial intelligence (AI) techniques, such as the use of heuristics incorporated into image processing algorithms, is the primary approach. On a broad scale, this research addressed the problem of segmentation of a digital image based on color information. The algorithm that was developed to segment the image strictly on the basis of color information was shown to be a useful aid in the identification of tumor border, ulcer, and other features of interest. As a specific application example, the method was applied to 200 digitized skin tumor images to identify the feature called variegated coloring. Extensive background information is provided, and the development of the algorithm is described.
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Umbaugh et al. (Fri,) studied this question.
synapsesocial.com/papers/6a208f7705ff00c089b41bd5 — DOI: https://doi.org/10.1109/51.45955
Scott E. Umbaugh
Southern Illinois University Edwardsville
Randy H. Moss
Missouri University of Science and Technology
William V. Stoecker
University of Missouri
IEEE Engineering in Medicine and Biology Magazine
University of Missouri
Missouri University of Science and Technology
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