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VisDrone-SOT2020: The Vision Meets Drone Single Object Tracking Challenge�Results

Published: 23 August 2020 Publication History

Abstract

The Vision Meets Drone (VisDrone2020) Single Object Tracking is the third annual UAV tracking evaluation activity organized by the VisDrone team, in conjunction with European Conference on Computer Vision (ECCV 2020). The VisDrone-SOT2020 Challenge presents and discusses the results of 13 participating algorithms in detail. By using ensemble of different trackers trained on several large-scale datasets, the top performer in VisDrone-SOT2020 achieves better results than the counterparts in VisDrone-SOT2018 and VisDrone-SOT2019. The challenging results, collected videos as well as the valuation toolkit are made available at http://aiskyeye.com/. By holding VisDrone-SOT2020 challenge, we hope to provide the community a dedicated platform for developing and evaluating drone-based tracking approaches.

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    cover image Guide Proceedings
    Computer Vision – ECCV 2020 Workshops: Glasgow, UK, August 23–28, 2020, Proceedings, Part IV
    Aug 2020
    776 pages
    ISBN:978-3-030-66822-8
    DOI:10.1007/978-3-030-66823-5

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    Springer-Verlag

    Berlin, Heidelberg

    Publication History

    Published: 23 August 2020

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    1. Drone-based single object tracking
    2. Drone
    3. Performance evaluation

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