2009 IEEE International Conference on
Systems, Man, and Cybernetics |
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Abstract
Images segmentation is an important issue for many
applications as pattern recognition and computer
vision. Thresholding is an important and fast technique
used in most applications. Gaussian Otsu¡¯s method is a
thresholding technique based on between class
variance. Gamma distribution models data more than
Gaussian distribution. In this paper, we developed a
new formula using Otsu¡¯s method for estimating the
optimal threshold values based on Gamma
distribution. Our method applied on bimodal and
multimodal images. Also It uses an iteratively rather
than sequentially to decrease the number of
operations. Further, using Gamma distribution give
satisfying thresholding results in low-high contrast
images where modes are symmetric or non-symmetric.
For our results, we compared it with the original
Gaussian Otsu¡¯s method.