The Second-place Solution for CVPR 2022 SoccerNet Tracking Challenge
- URL: http://arxiv.org/abs/2211.13481v1
- Date: Thu, 24 Nov 2022 08:58:15 GMT
- Title: The Second-place Solution for CVPR 2022 SoccerNet Tracking Challenge
- Authors: Fan Yang, Shigeyuki Odashima, Shoichi Masui, Shan Jiang
- Abstract summary: Method mainly includes two steps: online short-term tracking using our Cascaded Buffer-IoU (C-BIoU) Tracker, and, offline long-term tracking using appearance feature and hierarchical clustering.
Online tracking yielded HOTA scores near 90, and offline tracking further improved HOTA scores to around 93.2.
- Score: 6.388173902438571
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This is our second-place solution for CVPR 2022 SoccerNet Tracking Challenge.
Our method mainly includes two steps: online short-term tracking using our
Cascaded Buffer-IoU (C-BIoU) Tracker, and, offline long-term tracking using
appearance feature and hierarchical clustering. At each step, online tracking
yielded HOTA scores near 90, and offline tracking further improved HOTA scores
to around 93.2.
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