Spectral salient object detection

Multimedia and Expo(2018)

引用 26|浏览79
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摘要
Many existing methods for salient object detection are performed by over-segmenting images into non-overlapping regions, which facilitate local/global color statistics for saliency computation. In this paper, we propose a new approach: spectral salient object detection, which is benefited from selected attributes of normalized cut, enabling better retaining of holistic salient objects as comparing to conventionally employed pre-segmentation techniques. The proposed saliency detection method recursively bi-partitions regions that render the lowest cut cost in each iteration, resulting in binary spanning tree structure. Each segmented region is then evaluated under criterion that fit Gestalt laws and statistical prior. Final result is obtained by integrating multiple intermediate saliency maps. Experimental results on three benchmark datasets demonstrate the effectiveness of the proposed method against 13 state-of-the-art approaches to salient object detection.
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关键词
image colour analysis,image segmentation,object detection,statistical analysis,trees (mathematics),Gestalt law,binary spanning tree structure,image segmentation,local-global color statistics,nonoverlapping region,normalized cut,presegmentation technique,saliency computation,spectral salient object detection,statistical prior,Gestalt laws,Normalized cut,Partition,Pre-segmentation,Salient object detection
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