CVAIDec 15, 2023

Tracking Skiers from the Top to the Bottom

arXiv:2312.09723v113 citationsh-index: 38WACV
Originality Synthesis-oriented
AI Analysis

This work addresses the lack of studies and datasets for computer vision in skiing, offering a resource for researchers and practitioners in sports analytics, though it is incremental in filling existing gaps.

The paper tackles the problem of skier tracking in videos to enable performance analysis in skiing, introducing the SkiTB dataset and testing various tracking algorithms to provide insights into their applicability.

Skiing is a popular winter sport discipline with a long history of competitive events. In this domain, computer vision has the potential to enhance the understanding of athletes' performance, but its application lags behind other sports due to limited studies and datasets. This paper makes a step forward in filling such gaps. A thorough investigation is performed on the task of skier tracking in a video capturing his/her complete performance. Obtaining continuous and accurate skier localization is preemptive for further higher-level performance analyses. To enable the study, the largest and most annotated dataset for computer vision in skiing, SkiTB, is introduced. Several visual object tracking algorithms, including both established methodologies and a newly introduced skier-optimized baseline algorithm, are tested using the dataset. The results provide valuable insights into the applicability of different tracking methods for vision-based skiing analysis. SkiTB, code, and results are available at https://machinelearning.uniud.it/datasets/skitb.

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