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Progressive Unsupervised Learning for Visual Object Tracking

Qiangqiang Wu, Jia Wan, Antoni B. Chan

202139 citationsDOI

Abstract

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.

Topics & Concepts

BitTorrent trackerComputer scienceArtificial intelligenceUnsupervised learningObject (grammar)Eye trackingNoise (video)Tracking (education)Deep learningPattern recognition (psychology)Computer visionActive appearance modelImage (mathematics)PsychologyPedagogyVideo Surveillance and Tracking MethodsImage Enhancement TechniquesFire Detection and Safety Systems
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