region based active contour model based on markov random field to segment images with intensity non-uniformity and noise

نویسندگان

zahra shahvaran

kamran kazemi

mohammad sadegh helfroush

nassin jafarian

چکیده

this paper represents a new region-based active contour model that can be used to segment images with intensity non-uniformity and high level noise. the main idea of our proposed method is to use gaussian distributions with different means and variances with incorporation of intensity non-uniformity model for image segmentation. in order to integrate the spatial information between neighboring pixels in our proposed method, we use markov random field. our experiments on synthetic images and simulated cerebral mr images show the advantages of the proposed method.

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عنوان ژورنال:
journal of medical signals and sensors

جلد ۲، شماره ۱، صفحات ۱۷-۰

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