GTA: Global Tracklet Association for Multi-Object Tracking in Sports
Loading...
Date
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
Multi-object tracking in sports scenarios has become one ofthe focal points in computer vision, experiencing significant advancements
through the integration of deep learning techniques. Despite these
breakthroughs, challenges remain, such as accurately re-identifying players
upon re-entry into the scene and minimizing ID switches. In this
paper, we propose an appearance-based global tracklet association algorithm
designed to enhance tracking performance by splitting tracklets
containing multiple identities and connecting tracklets seemingly from
the same identity. This method can serve as a plug-and-play refinement
tool for any multi-object tracker to further boost their performance. The
proposed method achieved a new state-of-the-art performance on the
SportsMOT dataset with HOTA score of 81.04%. Similarly, on the SoccerNet
dataset, our method enhanced multiple trackers’ performance,
consistently increasing the HOTA score from 79.41% to 83.11%. These
significant and consistent improvements across different trackers and
datasets underscore our proposed method’s potential impact on the application
of sports player tracking. We open-source our project codebase
at https://github.com/sjc042/gta-link.git.
Description
Thesis (Master's)--University of Washington, 2024
