Integrating Boundary Cue with Superpixel for Image Segmentation

This paper researches image segmentation as a global optimization problem and proposes a new way, which is called super pixel status model, to integrate boundary and region cue. Super pixel status model is a label model which describes the joint distribution of boundary and region classification in a bayesian framework. For organizing a boundary classifier, the contour of super pixel is decomposed into multiple line segments, and a robust line descriptor is presented to form line feature vector. Finally, an objective function is defined to assemble all super pixels statuses across the entire image for segmentation. Experiments and results show that the effectiveness of our approach.

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