Publication | Closed Access
Graph Attention Tracking
471
Citations
28
References
2021
Year
Unknown Venue
Siamese NetworkGraph Attention TrackingEngineeringMachine LearningVisual Tracking TaskNetwork AnalysisGraph ProcessingImage AnalysisData SciencePattern RecognitionObject TrackingMachine VisionObject DetectionPopular Siamese TrackersMoving Object TrackingComputer ScienceVideo UnderstandingDeep LearningComputer VisionGraph TheoryEye TrackingGraph AnalysisGraph Neural NetworkTracking System
Siamese network based trackers formulate the visual tracking task as a similarity matching problem. Almost all popular Siamese trackers realize the similarity learning via convolutional feature cross-correlation between a target branch and a search branch. However, since the size of target feature region needs to be pre-fixed, these cross-correlation base methods suffer from either reserving much adverse background information or missing a great deal of foreground information. Moreover, the global matching be-tween the target and search region also largely neglects the target structure and part-level information.In this paper, to solve the above issues, we propose a simple target-aware Siamese graph attention network for general object tracking. We propose to establish part-to-part correspondence between the target and the search region with a complete bipartite graph, and apply the graph attention mechanism to propagate target information from the template feature to the search feature. Further, instead of using the pre-fixed region cropping for template-feature-area selection, we investigate a target-aware area selection mechanism to fit the size and aspect ratio variations of different objects. Experiments on challenging benchmarks including GOT-10k, UAV123, OTB-100 and LaSOT demonstrate that the proposed SiamGAT outperforms many state-of-the-art trackers and achieves leading performance. Code is available at: https://git.io/SiamGAT
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