Learning long-term structural dependencies for video salient object detection
Existing video salient object detection (VSOD) methods focus on exploring either short-term or long-term temporal information. However, temporal information is exploited in a global frame-level or regular grid structure, neglecting inter-frame structural dependencies. In this article, we propose to...
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sg-smu-ink.sis_research-88742023-06-15T09:00:05Z Learning long-term structural dependencies for video salient object detection WANG, Bo LIU, Wenxi HAN, Guoqiang HE, Shengfeng Existing video salient object detection (VSOD) methods focus on exploring either short-term or long-term temporal information. However, temporal information is exploited in a global frame-level or regular grid structure, neglecting inter-frame structural dependencies. In this article, we propose to learn long-term structural dependencies with a structure-evolving graph convolutional network (GCN). Particularly, we construct a graph for the entire video using a fast supervoxel segmentation method, in which each node is connected according to spatio-temporal structural similarity. We infer the inter-frame structural dependencies of salient object using convolutional operations on the graph. To prune redundant connections in the graph and better adapt to the moving salient object, we present an adaptive graph pooling to evolve the structure of the graph by dynamically merging similar nodes, learning better hierarchical representations of the graph. Experiments on six public datasets show that our method outperforms all other state-of-the-art methods. Furthermore, We also demonstrate that our proposed adaptive graph pooling can effectively improve the supervoxel algorithm in the term of segmentation accuracy. 2020-01-01T08:00:00Z text https://ink.library.smu.edu.sg/sis_research/7871 info:doi/10.1109/TIP.2020.3023591 Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Predictive models Object detection Feature extraction Saliency detection Convolution Merging Object recognition Video salient object detection graph convolutional network supervoxel Information Security |
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Predictive models Object detection Feature extraction Saliency detection Convolution Merging Object recognition Video salient object detection graph convolutional network supervoxel Information Security WANG, Bo LIU, Wenxi HAN, Guoqiang HE, Shengfeng Learning long-term structural dependencies for video salient object detection |
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Existing video salient object detection (VSOD) methods focus on exploring either short-term or long-term temporal information. However, temporal information is exploited in a global frame-level or regular grid structure, neglecting inter-frame structural dependencies. In this article, we propose to learn long-term structural dependencies with a structure-evolving graph convolutional network (GCN). Particularly, we construct a graph for the entire video using a fast supervoxel segmentation method, in which each node is connected according to spatio-temporal structural similarity. We infer the inter-frame structural dependencies of salient object using convolutional operations on the graph. To prune redundant connections in the graph and better adapt to the moving salient object, we present an adaptive graph pooling to evolve the structure of the graph by dynamically merging similar nodes, learning better hierarchical representations of the graph. Experiments on six public datasets show that our method outperforms all other state-of-the-art methods. Furthermore, We also demonstrate that our proposed adaptive graph pooling can effectively improve the supervoxel algorithm in the term of segmentation accuracy. |
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WANG, Bo LIU, Wenxi HAN, Guoqiang HE, Shengfeng |
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WANG, Bo LIU, Wenxi HAN, Guoqiang HE, Shengfeng |
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WANG, Bo |
title |
Learning long-term structural dependencies for video salient object detection |
title_short |
Learning long-term structural dependencies for video salient object detection |
title_full |
Learning long-term structural dependencies for video salient object detection |
title_fullStr |
Learning long-term structural dependencies for video salient object detection |
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Learning long-term structural dependencies for video salient object detection |
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learning long-term structural dependencies for video salient object detection |
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Institutional Knowledge at Singapore Management University |
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2020 |
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https://ink.library.smu.edu.sg/sis_research/7871 |
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