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AutoTrack: Towards High-Performance Visual Tracking for UAV with Automatic Spatio-Temporal Regularization

About

Most existing trackers based on discriminative correlation filters (DCF) try to introduce predefined regularization term to improve the learning of target objects, e.g., by suppressing background learning or by restricting change rate of correlation filters. However, predefined parameters introduce much effort in tuning them and they still fail to adapt to new situations that the designer did not think of. In this work, a novel approach is proposed to online automatically and adaptively learn spatio-temporal regularization term. Spatially local response map variation is introduced as spatial regularization to make DCF focus on the learning of trust-worthy parts of the object, and global response map variation determines the updating rate of the filter. Extensive experiments on four UAV benchmarks have proven the superiority of our method compared to the state-of-the-art CPU- and GPU-based trackers, with a speed of ~60 frames per second running on a single CPU. Our tracker is additionally proposed to be applied in UAV localization. Considerable tests in the indoor practical scenarios have proven the effectiveness and versatility of our localization method. The code is available at https://github.com/vision4robotics/AutoTrack.

Yiming Li, Changhong Fu, Fangqiang Ding, Ziyuan Huang, Geng Lu• 2020

Related benchmarks

TaskDatasetResultRank
Visual Object TrackingUAV123 (test)--
188
Visual Object TrackingUAV123
AUC0.671
165
Visual TrackingUAV123--
41
Visual Object TrackingDTB70 (test)
AUC47.8
19
Visual Object TrackingUAVDT (test)
AUC45
19
Visual Object TrackingUAVTrack112 (test)
AUC46.5
19
Visual Object TrackingUAVTrack112 L (test)
AUC (%)40.2
19
Visual Object TrackingNfS
AUC Score0.594
17
UAV TrackingVisDrone 2018
Precision78.8
15
UAV TrackingUAVDT (test)
Precision71.8
15
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