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Binarization of medical images based on the recursive application of mean shift filtering: Another algorithm
Author(s) -
Roberto Roberto odriguez
Publication year - 2008
Publication title -
advances and applications in bioinformatics and chemistry
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.223
H-Index - 15
ISSN - 1178-6949
DOI - 10.2147/aabc.s3206
Subject(s) - computer science , segmentation , artificial intelligence , algorithm , image segmentation , image (mathematics) , mean shift , otsu's method , entropy (arrow of time) , pattern recognition (psychology) , computer vision , physics , quantum mechanics
Binarization is often recognized to be one of the most important steps in most high-level image analysis systems, particularly for object recognition. Its precise functioning highly determines the performance of the entire system. According to many researchers, segmentation finishes when the observer's goal is satisfied. Experience has shown that the most effective methods continue to be the iterative ones. However, a problem with these algorithms is the stopping criterion. In this work, entropy is used as the stopping criterion when segmenting an image by recursively applying mean shift filtering. Of this way, a new algorithm is introduced for the binarization of medical images, where the binarization is carried out after the segmented image was obtained. The good performance of the proposed method; that is, the good quality of the binarization, is illustrated with several experimental results. In this paper a comparison was carried out among the obtained results with this new algorithm with respect to another developed by the author and collaborators previously and also with Otsu's method.

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