视觉对象跟踪的渐进式无监督学习

Wu, Jia Wan, Antoni B. Chan
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引用次数: 23

摘要

在本文中,我们提出了一种渐进式无监督学习(PUL)框架,该框架完全消除了视觉跟踪中对标注训练视频的需求。具体来说,我们首先学习了一个背景辨别(BD)模型,该模型通过对比学习的方式有效地将物体与背景区分开来。然后,我们使用BD模型在顺序帧中逐步挖掘时间对应的补丁(即,由轨道连接的补丁)。由于BD模型是不完善的,因此挖掘的补丁对是有噪声的,我们提出了一个噪声鲁棒损失函数来更有效地从这些噪声数据中学习时间对应。我们使用所提出的噪声鲁棒损失来训练连体跟踪器的骨干网络。无需在线微调或自适应,我们的无监督实时暹罗跟踪器可以优于最先进的无监督深度跟踪器,并获得与监督基线相竞争的结果。
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Progressive Unsupervised Learning for Visual Object Tracking
In this paper, we propose a progressive unsupervised learning (PUL) framework, which entirely removes the need for annotated training videos in visual tracking. Specifically, we first learn a background discrimination (BD) model that effectively distinguishes an object from back-ground in a contrastive learning way. We then employ the BD model to progressively mine temporal corresponding patches (i.e., patches connected by a track) in sequential frames. As the BD model is imperfect and thus the mined patch pairs are noisy, we propose a noise-robust loss function to more effectively learn temporal correspondences from this noisy data. We use the proposed noise robust loss to train backbone networks of Siamese trackers. Without online fine-tuning or adaptation, our unsupervised real-time Siamese trackers can outperform state-of-the-art unsupervised deep trackers and achieve competitive results to the supervised baselines.
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