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http://dx.doi.org/10.12941/jksiam.2014.18.129

IMAGE SEGMENTATION BASED ON THE STATISTICAL VARIATIONAL FORMULATION USING THE LOCAL REGION INFORMATION  

Park, Sung Ha (Department of Mathematical Sciences, KAIST)
Lee, Chang-Ock (Department of Mathematical Sciences, KAIST)
Hahn, Jooyoung (Advanced Simulation Technologies, AVL)
Publication Information
Journal of the Korean Society for Industrial and Applied Mathematics / v.18, no.2, 2014 , pp. 129-142 More about this Journal
Abstract
We propose a variational segmentation model based on statistical information of intensities in an image. The model consists of both a local region-based energy and a global region-based energy in order to handle misclassification which happens in a typical statistical variational model with an assumption that an image is a mixture of two Gaussian distributions. We find local ambiguous regions where misclassification might happen due to a small difference between two Gaussian distributions. Based on statistical information restricted to the local ambiguous regions, we design a local region-based energy in order to reduce the misclassification. We suggest an algorithm to avoid the difficulty of the Euler-Lagrange equations of the proposed variational model.
Keywords
Image segmentation; Statistical variational formulation; Region competition; Muitidimensional Gaussian PDF;
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