A novel method for edge detection using 2 dimensional Gamma distribution

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Abstract

Problem statement: Edge detection is an important field in image processing. Edges characterize object boundaries and are therefore useful for segmentation, registration, feature extraction, and identification of objects in a scene. Approach: This study presented a novel method for edge detection using 2D Gamma distribution. Edge detection is traditionally implemented by convolving the image with masks. These masks are constructed using a first derivative, called gradient or second derivative called Laplacien. Thus, the problem of edge detection is therefore related to the problem of mask construction. We propose a novel method to construct different gradient masks from 2D Gamma distribution. Results: The different constructed masks from 2D Gamma distribution are applied on images and we obtained very good results in comparing with the well-known Sobel gradient and Canny gradient results. Conclusion: The experiment showed that the proposed method obtained very good results but with a big time complexity due to the big number of constructed masks. © 2010 Science Publications.

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APA

El-Zaart, A. (2010). A novel method for edge detection using 2 dimensional Gamma distribution. Journal of Computer Science, 6(2), 199–204. https://doi.org/10.3844/jcssp.2010.199.204

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