UPM Institutional Repository

Motion analysis driven by table tennis pose and analysis of participation motivation and athlete satisfaction based on artificial intelligence YOLOv8


Citation

Yu, Kaihao and Samsudin, Shamsulariffin Bin and Ramlan, Mohd Aswad and Manaf, Faizal Bin Abd and Cong, Yuxin (2026) Motion analysis driven by table tennis pose and analysis of participation motivation and athlete satisfaction based on artificial intelligence YOLOv8. Scientific Reports, 16 (1). art. no. 9151. pp. 1-19. ISSN 2045-2322

Abstract

In table tennis training, pose-based motion analysis is of great significance for technical evaluation and training feedback. With the development of Artificial Intelligence (AI), pose estimation provides a new technical approach for real-time and refined motion analysis. This study proposes a Lightweight Attention-enhanced Fusion Pose Estimation Network (LAFPose), which is improved based on YOLOv8m-Pose. The model adopts MobileNetV3 as the backbone feature extraction network, introduces the Convolutional Block Attention Module (CBAM) and the adaptive key point enhancement module, and replaces the up-sampling module with the Content-Aware ReAssembly of Features (CARAFE) module. These designs make the network structure more lightweight and enhance its feature expression capability. Experiments on table tennis videos from the University of Central Florida 101 (UCF101) dataset show that LAFPose achieves an accuracy of 86.8% with a model size of only 33.2 MB and a computational cost of 46 GFLOPS, achieving a better balance between lightweight performance and precision. In the empirical study, 120 athletes receive AI system intervention. Three groups are designed: the real AI intervention group, the false feedback control group, and the traditional training group. The results show that the total motivation score of the real AI intervention group increases from 18.45 to 20.75, and its satisfaction score rises from 3.62 to 4.21. Both scores are significantly higher than those of the other groups (p < 0.001). Cohen’s d reaches a large effect size. The results show that the pose-driven motion analysis and real-time feedback mechanism supported by LAFPose exhibit excellent performance in computational efficiency and analysis accuracy, and significantly enhance athletes’ participation motivation and training experience. It holds important practical value for the design of intelligent sports training systems and sports psychology research.


Download File

[img] Text
124706.pdf - Published Version
Available under License Creative Commons Attribution Non-commercial No Derivatives.

Download (3MB)
Official URL or Download Paper: https://www.nature.com/articles/s41598-026-39835-3

Additional Metadata

Item Type: Article
Subject: Multidisciplinary
Divisions: Faculty of Educational Studies
Faculty of Forestry and Environment
DOI Number: https://doi.org/10.1038/s41598-026-39835-3
Publisher: Nature Research
Keywords: Athletes’ satisfaction; Lightweight deep learning; Motivation for participation; Pose estimation for table tennis motion analysis; Yolov8m-pose
Sustainable Development Goals (SDGs): SDG 3: Good Health and Well-being, SDG 9: Industry, Innovation and Infrastructure, SDG 4: Quality Education
Depositing User: Ms. Siti Radziah Mohamed@mahmod
Date Deposited: 22 Apr 2026 01:09
Last Modified: 22 Apr 2026 01:09
Altmetrics: http://www.altmetric.com/details.php?domain=psasir.upm.edu.my&doi=10.1038/s41598-026-39835-3
URI: http://psasir.upm.edu.my/id/eprint/124706
Statistic Details: View Download Statistic

Actions (login required)

View Item View Item