TTSWING: a Dataset for Table Tennis Swing Analysis
- URL: http://arxiv.org/abs/2306.17550v1
- Date: Fri, 30 Jun 2023 11:06:46 GMT
- Title: TTSWING: a Dataset for Table Tennis Swing Analysis
- Authors: Che-Yu Chou, Zheng-Hao Chen, Yung-Hoh Sheu, Hung-Hsuan Chen, Sheng K.
Wu
- Abstract summary: This dataset comprises comprehensive swing information obtained through 9-axis sensors integrated into custom-made racket grips.
We detail the data collection and annotation procedures.
We conduct pilot studies utilizing diverse machine learning models for swing analysis.
- Score: 1.539942973115038
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We introduce TTSWING, a novel dataset designed for table tennis swing
analysis. This dataset comprises comprehensive swing information obtained
through 9-axis sensors integrated into custom-made racket grips, accompanied by
anonymized demographic data of the players. We detail the data collection and
annotation procedures. Furthermore, we conduct pilot studies utilizing diverse
machine learning models for swing analysis. TTSWING holds tremendous potential
to facilitate innovative research in table tennis analysis and is a valuable
resource for the scientific community. We release the dataset and experimental
codes at https://github.com/DEPhantom/TTSWING.
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