Depth saliency based on anisotropic center-surround difference

ICIP(2014)

引用 362|浏览114
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摘要
Most previous works on saliency detection are dedicated to 2D images. Recently it has been shown that 3D visual information supplies a powerful cue for saliency analysis. In this paper, we propose a novel saliency method that works on depth images based on anisotropic center-surround difference. Instead of depending on absolute depth, we measure the saliency of a point by how much it outstands from surroundings, which takes the global depth structure into consideration. Besides, two common priors based on depth and location are used for refinement. The proposed method works within a complexity of O(N) and the evaluation on a dataset of over 1000 stereo images shows that our method outperforms state-of-the-art.
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关键词
saliency measurement,stereo images,global depth structure,saliency detection,depth saliency,3d visual information,saliency analysis,stereo image processing,depth image,anisotropic center-surround difference
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