Saliency Optimization from Robust Background Detection

CVPR(2014)

引用 1515|浏览188
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摘要
Recent progresses in salient object detection have exploited the boundary prior, or background information, to assist other saliency cues such as contrast, achieving state-of-the-art results. However, their usage of boundary prior is very simple, fragile, and the integration with other cues is mostly heuristic. In this work, we present new methods to address these issues. First, we propose a robust background measure, called boundary connectivity. It characterizes the spatial layout of image regions with respect to image boundaries and is much more robust. It has an intuitive geometrical interpretation and presents unique benefits that are absent in previous saliency measures. Second, we propose a principled optimization framework to integrate multiple low level cues, including our background measure, to obtain clean and uniform saliency maps. Our formulation is intuitive, efficient and achieves state-of-the-art results on several benchmark datasets.
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关键词
optimisation,image processing,saliency optimization,boundary connectivity,image boundaries,robust background measure,robust background detection,object detection,salient object detection,image regions,robustness,optimization,benchmark testing,layout
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