Half-integrality based algorithms for cosegmentation of images

Lopamudra Mukherjee(University of Wisconsin–Whitewater), Vikas Singh(University of Wisconsin–Madison), Charles R. Dyer(University of Wisconsin–Madison)
2009 IEEE Conference on Computer Vision and Pattern Recognition
June 1, 2009
Cited by 174Open Access
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Abstract

We study the cosegmentation problem where the objective is to segment the same object (i.e., region) from a pair of images. The segmentation for each image can be cast using a partitioning/segmentation function with an additional constraint that seeks to make the histograms of the segmented regions (based on intensity and texture features) similar. Using Markov Random Field (MRF) energy terms for the simultaneous segmentation of the images together with histogram consistency requirements using the squared L(2) (rather than L(1)) distance, after linearization and adjustments, yields an optimization model with some interesting combinatorial properties. We discuss these properties which are closely related to certain relaxation strategies recently introduced in computer vision. Finally, we show experimental results of the proposed approach.


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