2020
DOI: 10.1109/access.2020.3036533
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Cross Complementary Fusion Network for Video Salient Object Detection

Abstract: Recently, optical flow guided video saliency detection methods have achieved high performance. However, the computation cost of optical flow is usually expensive, which limits the applications of these methods in time-critical scenarios. In this paper, we propose an end-to-end cross complementary network (CCNet) based on fully convolutional network for video saliency detection. The CCNet consists of two effective components: single-image representation enhancement (SRE) module and spatiotemporal information le… Show more

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Cited by 4 publications
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“…Cluster saliency is measured using spatial, corresponding and contrast and the results are obtained by fusing the single and multi-image saliency maps. There is another research [28]- [34] where computation of robust geodesic measurement is done to get the saliency mapping. In [35]- [40] has used a super pixel-based strategy and this helps in formulating our proposed custom spatio-temporal fusion saliency detection method.…”
Section:  Issn: 2252-8938mentioning
confidence: 99%
“…Cluster saliency is measured using spatial, corresponding and contrast and the results are obtained by fusing the single and multi-image saliency maps. There is another research [28]- [34] where computation of robust geodesic measurement is done to get the saliency mapping. In [35]- [40] has used a super pixel-based strategy and this helps in formulating our proposed custom spatio-temporal fusion saliency detection method.…”
Section:  Issn: 2252-8938mentioning
confidence: 99%