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Siamese Anchor Proposal Network for High-Speed Aerial Tracking

About

In the domain of visual tracking, most deep learning-based trackers highlight the accuracy but casting aside efficiency. Therefore, their real-world deployment on mobile platforms like the unmanned aerial vehicle (UAV) is impeded. In this work, a novel two-stage Siamese network-based method is proposed for aerial tracking, \textit{i.e.}, stage-1 for high-quality anchor proposal generation, stage-2 for refining the anchor proposal. Different from anchor-based methods with numerous pre-defined fixed-sized anchors, our no-prior method can 1) increase the robustness and generalization to different objects with various sizes, especially to small, occluded, and fast-moving objects, under complex scenarios in light of the adaptive anchor generation, 2) make calculation feasible due to the substantial decrease of anchor numbers. In addition, compared to anchor-free methods, our framework has better performance owing to refinement at stage-2. Comprehensive experiments on three benchmarks have proven the superior performance of our approach, with a speed of around 200 frames/s.

Changhong Fu, Ziang Cao, Yiming Li, Junjie Ye, Chen Feng• 2020

Related benchmarks

TaskDatasetResultRank
Nighttime UAV TrackingUAVDark135
Precision42.4
14
Nighttime UAV TrackingDarkTrack 2021
Precision41.9
14
Nighttime UAV TrackingNAT 2021 (test)
Precision55.8
14
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