Automatic salient object segmentation based on context and shape prior
Author(s) -
Huaizu Jiang,
Jingdong Wang,
Zejian Yuan,
Shipeng Li,
Nanning Zheng
Publication year - 2011
Language(s) - English
Resource type - Conference proceedings
DOI - 10.5244/c.25.110
Subject(s) - artificial intelligence , segmentation , computer science , energy minimization , object (grammar) , computer vision , benchmark (surveying) , salient , boundary (topology) , pattern recognition (psychology) , segmentation based object categorization , image segmentation , context (archaeology) , scale space segmentation , minification , binary number , mathematics , paleontology , mathematical analysis , chemistry , computational chemistry , arithmetic , geodesy , programming language , biology , geography
We propose a novel automatic salient object segmentation algorithm which integrates both bottom-up salient stimuli and object-level shape prior, i.e., a salient object has a well-defined closed boundary. Our approach is formalized as an iterative energy minimization framework, leading to binary segmentation of the salient object. Such energy minimization is initialized with a saliency map which is computed through context analysis based on multi-scale superpixels. Object-level shape prior is then extracted combining saliency with object boundary information. Both saliency map and shape prior update after each iteration. Experimental results on two public benchmark datasets show that our proposed approach outperforms state-of-the-art methods.
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