具有自适应遮挡和恢复判断的长期跟踪器

Ying Mi, Chan Liu, Chaohui Wang, Xiangyang Yue, Xiaohan Zhao, Lu Chen
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引用次数: 0

摘要

与短期任务相比,长期跟踪近年来受到了更多的关注和研究。长期跟踪更具挑战性,因为它需要解决两个难题:何时更新以及如何更新我们的模型。许多优秀的短期跟踪方法是逐帧更新或手动设置阈值来判断跟踪器是否需要更新,但当目标被遮挡或逃离视野时,容易获取和更新错误的样本,导致模型污染和漂移。不仅如此,由于缺乏重新检测机制,一旦目标丢失(特别是当目标从另一个位置重新出现时),这些短期跟踪方法很难恢复。在这项工作中,我们提出了一种具有自适应遮挡和恢复判断的高速长期跟踪器(LT-AOR),它通过识别信息和外观信息综合判断跟踪器的更新机会,并以简化的方式重新检测目标,从而在目标遮挡和丢失的情况下实现稳定跟踪。
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Long-term Tracker with Adaptive Occlusion and Recovery Judgment
Compared with a short-term task, long-term tracking has received more attention and research in recent years. Long-term tracking is more challenging because it needs to solve two difficult problems: when to update and how to update our model. Many outstanding short-term tracking methods update frame by frame or manually set the threshold to judge if the tracker should be updated, but when the target is blocked or escapes from the field of view, it is easy to get and update wrong samples, resulting in model pollution and drift. Not only that, but due to the lack of a re-detection mechanism, it is difficult for these short-term tracking methods to recover once the target is lost (especially when the target reappears from another location). In this work, we propose a high-speed long-term tracker with adaptive occlusion and recovery judgment (LT-AOR), which comprehensively judge the update chance of the tracker through the discrimination information and appearance information, and re-detects the target in a simplified way to achieve stable tracking in the case of target occlusion and loss.
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