Datasets:

Modalities:
Text
Video
Formats:
text
Languages:
English
Size:
< 1K
ArXiv:
Libraries:
Datasets
License:
text
stringlengths
18
18
v_-6Os86HzwCs_c001
v_-6Os86HzwCs_c003
v_-6Os86HzwCs_c007
v_-6Os86HzwCs_c009
v_2j7kLB-vEEk_c001
v_2j7kLB-vEEk_c002
v_2j7kLB-vEEk_c005
v_2j7kLB-vEEk_c007
v_2j7kLB-vEEk_c009
v_2j7kLB-vEEk_c010
v_4LXTUim5anY_c002
v_4LXTUim5anY_c003
v_4LXTUim5anY_c010
v_4LXTUim5anY_c012
v_4LXTUim5anY_c013
v_1LwtoLPw2TU_c006
v_1LwtoLPw2TU_c012
v_1LwtoLPw2TU_c014
v_1LwtoLPw2TU_c016
v_ApPxnw_Jffg_c001
v_ApPxnw_Jffg_c002
v_ApPxnw_Jffg_c009
v_ApPxnw_Jffg_c015
v_ApPxnw_Jffg_c016
v_CW0mQbgYIF4_c004
v_CW0mQbgYIF4_c005
v_CW0mQbgYIF4_c006
v_dChHNGIfm4Y_c003
v_Dk3EpDDa3o0_c002
v_Dk3EpDDa3o0_c007
v_1yHWGw8DH4A_c029
v_1yHWGw8DH4A_c047
v_1yHWGw8DH4A_c077
v_1yHWGw8DH4A_c601
v_1yHWGw8DH4A_c609
v_1yHWGw8DH4A_c610
v_gQNyhv8y0QY_c003
v_gQNyhv8y0QY_c012
v_gQNyhv8y0QY_c013
v_HdiyOtliFiw_c003
v_HdiyOtliFiw_c004
v_HdiyOtliFiw_c008
v_HdiyOtliFiw_c010
v_HdiyOtliFiw_c602
v_iIxMOsCGH58_c013

Dataset Card for SportsMOT

Dataset Details

Dataset Description

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. 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.

Dataset Sources [optional]

Dataset Structure

Data in SportsMOT is organized in the form of MOT Challenge 17.

  splits_txt(video-split mapping)
    - basketball.txt
    - volleyball.txt
    - football.txt
    - train.txt
    - val.txt
    - test.txt
  scripts
    - mot_to_coco.py
    - sportsmot_to_trackeval.py
  dataset(in MOT challenge format)
    - train
      - VIDEO_NAME1
        - gt
        - img1
          - 000001.jpg
          - 000002.jpg
        - seqinfo.ini
    - val(the same hierarchy as train)
    - test
      - VIDEO_NAME1
        - img1
          - 000001.jpg
          - 000002.jpg
        - seqinfo.ini

Dataset Creation

Curation Rationale

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.

Source Data

We select three worldwide famous sports, football, basketball, and volleyball, and collect videos of high-quality professional games including NCAA, Premier League, and Olympics from MultiSports, which is a large dataset in sports area focusing on spatio-temporal action localization.

Annotation process

We annotate the collected videos according to the following guidelines.

  1. The entire athlete’s limbs and torso, excluding any other objects like balls touching the athlete’s body, are required to be annotated.

  2. The annotators are asked to predict the bounding box of the athlete in the case of occlusion, as long as the athletes have a visible part of body. However, if half of the athletes’ torso is outside the view, annotators should just skip them.

  3. We ask the annotators to confirm that each player has a unique ID throughout the whole clip.

Dataset Curators

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

  • Yutao Cui

  • Chenkai Zeng

  • Xiaoyu Zhao

  • Yichun Yang

  • Gangshan Wu

  • Limin Wang

Citation Information

If you find this dataset useful, please cite as

@inproceedings{cui2023sportsmot,
  title={Sportsmot: A large multi-object tracking dataset in multiple sports scenes},
  author={Cui, Yutao and Zeng, Chenkai and Zhao, Xiaoyu and Yang, Yichun and Wu, Gangshan and Wang, Limin},
  booktitle={Proceedings of the IEEE/CVF International Conference on Computer Vision},
  pages={9921--9931},
  year={2023}
}
Downloads last month
83
Edit dataset card