DR^2Track: Towards Real-Time Visual Tracking for UAV via Distractor
Repressed Dynamic Regression
- URL: http://arxiv.org/abs/2008.03912v1
- Date: Mon, 10 Aug 2020 06:08:31 GMT
- Title: DR^2Track: Towards Real-Time Visual Tracking for UAV via Distractor
Repressed Dynamic Regression
- Authors: Changhong Fu, Fangqiang Ding, Yiming Li, Jin Jin and Chen Feng
- Abstract summary: In this work, we exploit the local maximum points of the response map generated in the detection phase to automatically locate current distractors.
Substantial experiments conducted on three challenging UAV benchmarks demonstrate both excellent performance and extraordinary speed.
- Score: 18.044423448896143
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Visual tracking has yielded promising applications with unmanned aerial
vehicle (UAV). In literature, the advanced discriminative correlation filter
(DCF) type trackers generally distinguish the foreground from the background
with a learned regressor which regresses the implicit circulated samples into a
fixed target label. However, the predefined and unchanged regression target
results in low robustness and adaptivity to uncertain aerial tracking
scenarios. In this work, we exploit the local maximum points of the response
map generated in the detection phase to automatically locate current
distractors. By repressing the response of distractors in the regressor
learning, we can dynamically and adaptively alter our regression target to
leverage the tracking robustness as well as adaptivity. Substantial experiments
conducted on three challenging UAV benchmarks demonstrate both excellent
performance and extraordinary speed (~50fps on a cheap CPU) of our tracker.
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