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ScalableTrack: Scalable One-Stream Tracking via Alternating Learning. | LitMetric

AI Article Synopsis

  • Transformer-based one-stream trackers are popular for visual object tracking but currently struggle with fixed computational dimensions, limiting their ability to learn important contextual information.
  • The proposed solution, ScalableTrack, enhances tracking by integrating feature extraction and information sharing through an innovative mutual guidance approach and an alternating learning strategy.
  • Experiments demonstrate that ScalableTrack outperforms existing state-of-the-art methods across various benchmarks, showcasing improved sensitivity to objects and better global representation capabilities.

Article Abstract

Transformer-based one-stream trackers are widely used to extract features and interact information for visual object tracking. However, the current one-stream tracker has fixed computational dimensions between different stages, which limits the network's ability to learn context clues and global representations, resulting in a decrease in the ability to distinguish between targets and backgrounds. To address this issue, a new scalable one-stream tracking framework, ScalableTrack, is proposed. It unifies feature extraction and information integration by intrastage mutual guidance, leveraging the scalability of target-oriented features to enhance object sensitivity and obtain discriminative global representations. In addition, we bridge interstage contextual cues by introducing an alternating learning strategy and solve the arrangement problem of the two modules. The alternating learning strategy uses alternate stacks of feature extraction and information interaction to focus on tracked objects and prevent catastrophic forgetting of target information between different stages. Experiments on eight challenging benchmarks (TrackingNet, GOT-10k, VOT2020, UAV123, LaSOT, LaSOT [Formula: see text] , OTB100, and TC128) show that ScalableTrack outperforms state-of-the-art (SOTA) methods with better generalization and global representation ability.

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Source
http://dx.doi.org/10.1109/TNNLS.2024.3402994DOI Listing

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