Visual object tracking via non-local correlation attention learning

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摘要

Siamese-based trackers have achieved remarkable advancements in performance of visual object tracking. The similarity matrix computed is crucial to Siamese-based tracker. However, the similarity matrix is lack of long-range dependency information which may lead to tracking drift on challenging scenes, like significant deformation, background clutter and occlusion. To address the above issue, this paper proposes a Siamese network with non-local correlation attention (SiamNCA). First, a non-local correlation attention module is proposed to integrate the long-range information into the similarity matrix, and give each sample in the search patch a weight based on their similarity to the template. Second, bi-directional features fusion module is introduced to fuse different similarity matrixes obtained with different level features. Finally, comprehensive experiments on representative tracking benchmarks, including OTB2015, VOT-2018, LaSOT and GOT-10k, reveal that the two modules can improve the performance of the baseline method in challenging scenes, and SiamNCA achieves state-of-art. For the average running speed, SiamNCA can achieve 43 FPS in real time.

论文关键词:Visual object tracking,Non-local attention,Multiple features fusion,Siamese network,Anchor-free

论文评审过程:Received 20 April 2022, Revised 23 July 2022, Accepted 7 August 2022, Available online 17 August 2022, Version of Record 29 August 2022.

论文官网地址:https://doi.org/10.1016/j.knosys.2022.109666