ADAPTED ALGORITHM OF IMAGE SEGMENTATION


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Abstract

An approach to image segmentation based on Markov random field with using of adapted local area is supported in this article. The choice of local area using source image based on mutual information criterion. The results of carried experiments prove the work efficiency of supported approach.

About the authors

V E Gai

A L Zhiznyakov

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Copyright (c) 2008 Gai V.E., Zhiznyakov A.L.

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