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Datasets/SportsMOT

SportsMOT

SportsMOT: A Large Multi-Object Tracking Dataset in Multiple Sports Scenes

VideosCC BY-NC 4.0Introduced 2023-04-11

Motivation

Multi-object tracking (MOT) is a fundamental task in computer vision, aiming to estimate objects (e.g., pedestrians and vehicles) bounding boxes and identities in video sequences.

Prevailing human-tracking MOT datasets mainly focus on pedestrians in crowded street scenes (e.g., MOT17/20) or dancers in static scenes (DanceTrack).

In spite of the increasing demands for sports analysis, there is a lack of multi-object tracking datasets for a variety of sports scenes, where the background is complicated, players possess rapid motion and the camera lens moves fast.

To this purpose, we propose a large-scale multi-object tracking dataset named SportsMOT, consisting of 240 video clips from 3 categories (i.e., basketball, football and volleyball).

The objective is to only track players on the playground (i.e., except for a number of spectators, referees and coaches) in various sports scenes. We expect SportsMOT to encourage the community to concentrate more on the complicated sports scenes.

Characteristics

  • Large scale
  • Fine Annotations
  • Player id consistency
  • No shot change
  • High and fixed resolution(1080P)
  • ...

Focus

  • Diverse sports scenes
  • Complex motion patterns
  • Challenging re-id

Download

Examples

You can download the example for SportsMOT.

  • OneDrive
  • Baidu Netdisk, password: 4dnw

Official Dataset

Please Sign up in codalab, and participate in our competition. Download links are available in Participate/Get Data.

News

  • SportsMOT is used for DeeperAction@ECCV-2022.

  • Refer to github repo: MCG-NJU/SportsMOT for the latest info.

Benchmarks

Multi-Object Tracking/HOTAMulti-Object Tracking/IDF1Multi-Object Tracking/AssAMulti-Object Tracking/MOTAMulti-Object Tracking/DetAMultiple Object Tracking/HOTAMultiple Object Tracking/IDF1Multiple Object Tracking/AssAMultiple Object Tracking/MOTAMultiple Object Tracking/DetAObject Tracking/HOTAObject Tracking/IDF1Object Tracking/AssAObject Tracking/MOTAObject Tracking/DetAVideo/HOTAVideo/IDF1Video/AssAVideo/MOTAVideo/DetA

Statistics

Papers
32
Benchmarks
20

Links

Homepage

Tasks

Multi-Object TrackingMultiple Object TrackingObject TrackingOnline Multi-Object TrackingVideo