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

Multi-object tracking in sports scenes plays a critical role in gathering players statistics, supporting further analysis, such as automatic tactical analysis. Yet existing MOT benchmarks cast little attention on the domain, limiting its development. In this work, we present a new large-scale multi-object tracking dataset in diverse sports scenes, coined as \emph{SportsMOT}, where all players on the court are supposed to be tracked. It consists of 240 video sequences, over 150K frames (almost 15\times MOT17) and over 1.6M bounding boxes (3\times MOT17) collected from 3 sports categories, including basketball, volleyball and football. Our dataset is characterized with two key properties: 1) fast and variable-speed motion and 2) similar yet distinguishable appearance. We expect SportsMOT to encourage the MOT trackers to promote in both motion-based association and appearance-based association. We benchmark several state-of-the-art trackers and reveal the key challenge of SportsMOT lies in object association. To alleviate the issue, we further propose a new multi-object tracking framework, termed as \emph{MixSort}, introducing a MixFormer-like structure as an auxiliary association model to prevailing tracking-by-detection trackers. By integrating the customized appearance-based association with the original motion-based association, MixSort achieves state-of-the-art performance on SportsMOT and MOT17. Based on MixSort, we give an in-depth analysis and provide some profound insights into SportsMOT. The dataset and code will be available at https://deeperaction.github.io/datasets/sportsmot.html.

PDF Abstract ICCV 2023 PDF ICCV 2023 Abstract

Datasets


Introduced in the Paper:

SportsMOT

Used in the Paper:

MOT17 CrowdHuman DanceTrack

Results from the Paper


Ranked #3 on Multi-Object Tracking on SportsMOT (using extra training data)

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Task Dataset Model Metric Name Metric Value Global Rank Uses Extra
Training Data
Result Benchmark
Multiple Object Tracking SportsMOT MixSort-OC HOTA 74.1 # 4
IDF1 74.4 # 5
AssA 62.0 # 4
MOTA 96.5 # 2
DetA 88.5 # 1
Multi-Object Tracking SportsMOT MixSort-OC HOTA 74.1 # 3
IDF1 74.4 # 4
AssA 62.0 # 3
MOTA 96.5 # 3
DetA 88.5 # 1
Multi-Object Tracking SportsMOT MixSort-Byte HOTA 65.7 # 9
IDF1 74.1 # 5
AssA 54.8 # 9
MOTA 96.2 # 6
DetA 78.8 # 9
Multiple Object Tracking SportsMOT MixSort-Byte HOTA 65.7 # 9
IDF1 74.1 # 6
AssA 54.8 # 9
MOTA 96.2 # 5
DetA 78.8 # 10

Methods