Graph-based Visual Saliency Model using Background Color

Authors

  • A. Maleki Faculty of Biomedical Engineering, Semnan University, Semnan, Iran.
  • Sh. Foolad Department of Electrical & Computer Engineering, Semnan University, Semnan, Iran.
Abstract:

Visual saliency is a cognitive psychology concept that makes some stimuli of a scene stand out relative to their neighbors and attract our attention. Computing visual saliency is a topic of recent interest. Here, we propose a graph-based method for saliency detection, which contains three stages: pre-processing, initial saliency detection and final saliency detection. The initial saliency map is obtained by putting adaptive threshold on color differences relative to the background. In final saliency detection, a graph is constructed, and the ranking technique is exploited. In the proposed method, the background is suppressed effectively, and often salient regions are selected correctly. Experimental results on the MSRA-1000 database demonstrate excellent performance and low computational complexity in comparison with the state-of-the-art methods.

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Journal title

volume 6  issue 1

pages  145- 156

publication date 2018-03-01

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