Exploiting Surroundedness for Saliency Detection: A Boolean Map Approach.

IEEE Trans. Pattern Anal. Mach. Intell.(2016)

引用 263|浏览108
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摘要
We demonstrate the usefulness of surroundedness for eye fixation prediction by proposing a Boolean Map based Saliency model (BMS). In our formulation, an image is characterized by a set of binary images, which are generated by randomly thresholding the image's feature maps in a whitened feature space. Based on a Gestalt principle of figure-ground segregation, BMS computes a saliency map by discovering surrounded regions via topological analysis of Boolean maps. Furthermore, we draw a connection between BMS and the Minimum Barrier Distance to provide insight into why and how BMS can properly captures the surroundedness cue via Boolean maps. The strength of BMS is verified by its simplicity, efficiency and superior performance compared with 10 state-of-the-art methods on seven eye tracking benchmark datasets.
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关键词
Image color analysis,Computational modeling,Visualization,Predictive models,Transforms,Pattern recognition,Machine intelligence
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