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Online Object Tracking with Proposal Selection

机译:通过提案选择进行在线对象跟踪

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Tracking-by-detection approaches are some of the most successful object trackers in recent years. Their success is largely determined by the detector model they learn initially and then update over time. However, under challenging conditions where an object can undergo transformations, e.g., severe rotation, these methods are found to be lacking. In this paper, we address this problem by formulating it as a proposal selection task and making two contributions. The first one is introducing novel proposals estimated from the geometric transformations undergone by the object, and building a rich candidate set for predicting the object location. The second one is devising a novel selection strategy using multiple cues, i.e., detection score and edgeness score computed from state-of-the-art object edges and motion boundaries. We extensively evaluate our approach on the visual object tracking 2014 challenge and online tracking benchmark datasets, and show the best performance.
机译:通过检测进行跟踪的方法是近年来最成功的对象跟踪器。他们的成功很大程度上取决于他们最初学习的探测器模型,然后随着时间的推移进行更新。但是,在具有挑战性的条件下,例如,物体可能会经历剧烈的旋转,很难找到这些方法。在本文中,我们通过将其表述为提案选择任务并做出两个贡献来解决此问题。第一个是介绍根据对象所经历的几何变换估算出的新颖建议,并建立一个丰富的候选集来预测对象的位置。第二个方案是设计一种使用多种提示的新颖选择策略,即根据最新的对象边缘和运动边界计算出的检测分数和边缘度分数。我们针对2014年视觉对象跟踪挑战和在线跟踪基准数据集广泛评估了我们的方法,并显示了最佳性能。

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