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Saliency-Associated Object Tracking

About

Most existing trackers based on deep learning perform tracking in a holistic strategy, which aims to learn deep representations of the whole target for localizing the target. It is arduous for such methods to track targets with various appearance variations. To address this limitation, another type of methods adopts a part-based tracking strategy which divides the target into equal patches and tracks all these patches in parallel. The target state is inferred by summarizing the tracking results of these patches. A potential limitation of such trackers is that not all patches are equally informative for tracking. Some patches that are not discriminative may have adverse effects. In this paper, we propose to track the salient local parts of the target that are discriminative for tracking. In particular, we propose a fine-grained saliency mining module to capture the local saliencies. Further, we design a saliency-association modeling module to associate the captured saliencies together to learn effective correlation representations between the exemplar and the search image for state estimation. Extensive experiments on five diverse datasets demonstrate that the proposed method performs favorably against state-of-the-art trackers.

Zikun Zhou, Wenjie Pei, Xin Li, Hongpeng Wang, Feng Zheng, Zhenyu He• 2021

Related benchmarks

TaskDatasetResultRank
Visual Object TrackingLaSOT (test)
AUC61.6
444
Object TrackingLaSoT
AUC61.6
333
Visual Object TrackingUAV123
AUC0.691
165
Visual Object TrackingOTB-100
AUC68.5
136
Visual Object TrackingNfS
AUC0.652
112
Object TrackingGOT-10k
AO64
74
Single Object TrackingLaSOT 18 (test)
Success Rate61.6
18
Visual Object TrackingVisDrone 2018 (test)
Precision76.9
15
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