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Online Deformable Object Tracking Based on Structure-Aware Hyper-Graph

机译:基于结构感知超图的在线可变形物体跟踪

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Recent advances in online visual tracking focus on designing part-based model to handle the deformation and occlusion challenges. However, previous methods usually consider only the pairwise structural dependences of target parts in two consecutive frames rather than the higher order constraints in multiple frames, making them less effective in handling large deformation and occlusion challenges. This paper describes a new and efficient method for online deformable object tracking. Different from most existing methods, this paper exploits higher order structural dependences of different parts of the tracking target in multiple consecutive frames. We construct a structure-aware hyper-graph to capture such higher order dependences, and solve the tracking problem by searching dense subgraphs on it. Furthermore, we also describe a new evaluating data set for online deformable object tracking (the Deform-SOT data set), which includes 50 challenging sequences with full annotations that represent realistic tracking challenges, such as large deformations and severe occlusions. The experimental result of the proposed method shows considerable improvement in performance over the state-of-the-art tracking methods.
机译:在线视觉跟踪的最新进展集中在设计基于零件的模型以应对变形和遮挡挑战。但是,以前的方法通常只考虑两个连续帧中目标零件的成对结构依赖性,而不考虑多个帧中的高阶约束,这使得它们在处理较大的变形和咬合挑战时效率较低。本文介绍了一种在线变形对象在线跟踪的有效新方法。与大多数现有方法不同,本文利用了多个连续帧中跟踪目标不同部分的高阶结构依赖性。我们构造了一个结构感知的超图来捕获这种更高阶的依赖性,并通过在其上搜索密集的子图来解决跟踪问题。此外,我们还描述了用于在线可变形物体跟踪的新评估数据集(Deform-SOT数据集),其中包括50个具有完整注释的挑战性序列,这些注释代表了现实的跟踪挑战,例如大变形和严重遮挡。所提出的方法的实验结果表明,与最新的跟踪方法相比,该方法的性能有了很大的提高。

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