1. Maximization of contour edge detection using adaptive thresholding
- Author
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Arthur Robert Weeks, Michelle Van Dyke-Lewis, and Harley R. Myler
- Subjects
Computer science ,Feature (computer vision) ,business.industry ,Computer Science::Computer Vision and Pattern Recognition ,Entropy (information theory) ,Computer vision ,Pattern recognition ,Maximization ,Artificial intelligence ,business ,Thresholding ,Edge detection - Abstract
A new adaptive thresholding technique is presented that maximizes the contour edge information within an image. Early work by Attneave suggested that visual information in images is concentrated at the contours. He concluded that the information associated with these points and their nearby neighbors is essential for image perception. Resnikoff has suggested a measurement of information gain in terms of direction. This measurement determines information gained from a measure of an angle direction along image contours relative to other measures of information gain for other positions along the curve. Hence, one form of information measure is the angular entropy of contours within an image. Our adaptive thresholding algorithm begins by varying the threshold value between a minimum and a maximum threshold value and then computing the total contour entropy over the entire binarized edge image. Next, the threshold value that yields the highest contour entropy is selected as the optimum threshold value. It is at this threshold value that the binarized image contains the greatest amount of image features.
- Published
- 1993
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