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MultiSenseBadminton: Wearable Sensor-Based Biomechanical Dataset for Evaluation of Badminton Performance

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Abstract
The sports industry is witnessing an increasing trend of utilizing multiple synchronized sensors for player data collection, enabling personalized training systems with multi-perspective real-time feedback. Badminton could benefit from these various sensors, but there is a scarcity of comprehensive badminton action datasets for analysis and training feedback. Addressing this gap, this paper introduces a multi-sensor badminton dataset for forehand clear and backhand drive strokes, based on interviews with coaches for optimal usability. The dataset covers various skill levels, including beginners, intermediates, and experts, providing resources for understanding biomechanics across skill levels. It encompasses 7,763 badminton swing data from 25 players, featuring sensor data on eye tracking, body tracking, muscle signals, and foot pressure. The dataset also includes video recordings, detailed annotations on stroke type, skill level, sound, ball landing, and hitting location, as well as survey and interview data. We validated our dataset by applying a proof-of-concept machine learning model to all annotation data, demonstrating its comprehensive applicability in advanced badminton training and research.
Author(s)
Seong, MinwooKim, GwangbinYeo, DohyeonKang, YuminYang, HeesanDelpreto, JosephMatusik, WojciechRus, DanielaKim, Seungjun
Issued Date
2024-04
Type
Article
DOI
10.1038/s41597-024-03144-z
URI
https://scholar.gist.ac.kr/handle/local/9621
Publisher
NATURE PORTFOLIO
Citation
SCIENTIFIC DATA, v.11, no.1
Appears in Collections:
Department of AI Convergence > 1. Journal Articles
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