Nonparametric Bayesian Image Segmentation
作者:Peter Orbanz, Joachim M. Buhmann
摘要
Image segmentation algorithms partition the set of pixels of an image into a specific number of different, spatially homogeneous groups. We propose a nonparametric Bayesian model for histogram clustering which automatically determines the number of segments when spatial smoothness constraints on the class assignments are enforced by a Markov Random Field. A Dirichlet process prior controls the level of resolution which corresponds to the number of clusters in data with a unique cluster structure. The resulting posterior is efficiently sampled by a variant of a conjugate-case sampling algorithm for Dirichlet process mixture models. Experimental results are provided for real-world gray value images, synthetic aperture radar images and magnetic resonance imaging data.
论文关键词:Markov random fields, Nonparametric Bayesian methods, Dirichlet process mixtures, Image segmentation, Clustering, Spatial statistics, Markov chain Monte Carlo
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论文官网地址:https://doi.org/10.1007/s11263-007-0061-0