AI for Equitable Tennis Training: Leveraging AI for Equitable and Accurate Classification of Tennis Skill Levels and Training Phases
Gyanna Gao, Hao-Yu Liao, Zhenhong Hu

TL;DR
This study demonstrates that SVM algorithms can classify tennis players' skill levels and swing phases with high accuracy using motion data, paving the way for affordable AI-based tennis training tools accessible on common devices.
Contribution
It introduces a novel application of SVM for classifying tennis skill levels and swing phases using inertial measurement data, supporting development of accessible AI training systems.
Findings
77% accuracy in classifying skill levels
Successful classification of five swing phases
Potential for developing affordable AI tennis training tools
Abstract
Numerous studies have demonstrated the manifold benefits of tennis, such as increasing overall physical and mental health. Unfortunately, many children and youth from low-income families are unable to engage in this sport mainly due to financial constraints such as private lesson expenses as well as logistical concerns to and back from such lessons and clinics. While several tennis self-training systems exist, they are often tailored for professionals and are prohibitively expensive. The present study aims to classify tennis players' skill levels and classify tennis strokes into phases characterized by motion attributes for a future development of an AI-based tennis self-training model for affordable and convenient applications running on devices used in daily life such as an iPhone or an Apple Watch for tennis skill improvement. We collected motion data, including Motion Yaw, Roll and…
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Taxonomy
TopicsSports Analytics and Performance · Sports Performance and Training · Software System Performance and Reliability
MethodsSupport Vector Machine
