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arxiv 2001.06303 v3 pith:QY7PZREQ submitted 2020-01-16 cs.CV

Detection and Tracking Meet Drones Challenge

classification cs.CV
keywords detectionobjecttrackingdronesvisdroneanalysischallengedataset
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Drones, or general UAVs, equipped with cameras have been fast deployed with a wide range of applications, including agriculture, aerial photography, and surveillance. Consequently, automatic understanding of visual data collected from drones becomes highly demanding, bringing computer vision and drones more and more closely. To promote and track the developments of object detection and tracking algorithms, we have organized three challenge workshops in conjunction with ECCV 2018, ICCV 2019 and ECCV 2020, attracting more than 100 teams around the world. We provide a large-scale drone captured dataset, VisDrone, which includes four tracks, i.e., (1) image object detection, (2) video object detection, (3) single object tracking, and (4) multi-object tracking. In this paper, we first present a thorough review of object detection and tracking datasets and benchmarks, and discuss the challenges of collecting large-scale drone-based object detection and tracking datasets with fully manual annotations. After that, we describe our VisDrone dataset, which is captured over various urban/suburban areas of 14 different cities across China from North to South. Being the largest such dataset ever published, VisDrone enables extensive evaluation and investigation of visual analysis algorithms for the drone platform. We provide a detailed analysis of the current state of the field of large-scale object detection and tracking on drones, and conclude the challenge as well as propose future directions. We expect the benchmark largely boost the research and development in video analysis on drone platforms. All the datasets and experimental results can be downloaded from https://github.com/VisDrone/VisDrone-Dataset.

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Cited by 2 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. DeTrack: A Benchmark and Altitude-Aware Dual World Model for Drone-embodied Tracking

    cs.CV 2026-05 unverdicted novelty 7.0

    DeTrack is a new benchmark for drone-embodied tracking in 3D environments and AaDWorlds is a dual world model that improves closed-loop performance by using altitude-aware predictions to balance visibility and safety.

  2. A Delta-Aware Orchestration Framework for Scalable Multi-Agent Edge Computing

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    DAOEF integrates delta-aware caching, action pruning, and hardware matching to deliver 1.45x gains and sub-linear scaling up to 250 agents in multi-agent edge computing.