Bayesian image segmentation fusion

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摘要

Image segmentation fusion can output a final consensus segmentation which in general is better than those of unsupervised image segmentation algorithms. In this paper, the image segmentation fusion is firstly formalized as a combinatorial optimization problem in terms of information theory. Then a Bayesian image segmentation fusion (BISF) model is proposed for a good consensus segmentation. We treat all the segmentation algorithms (or the same algorithm with different parameters) as new features and the segmentations of algorithms as values of the new features, which simplifies image segmentation fusion problems in computation complexity. Based on this idea, a generative model BISF is designed to sample the segmentation according to the discrete distribution, and the inference for BISF and the corresponding algorithm are illustrated in detail. At last, extensive empirical results demonstrate that BISF significantly outperforms other image segmentation fusion algorithms and the popular image segmentation algorithms or algorithms with different parameters in terms of popular indices.

论文关键词:Bayesian model,Image segmentation fusion,Variational inference,Generation model,Expectation maximization

论文评审过程:Received 4 March 2014, Revised 27 June 2014, Accepted 24 July 2014, Available online 19 August 2014.

论文官网地址:https://doi.org/10.1016/j.knosys.2014.07.021