1. Multistream Adaptive Attention-Enhanced Graph Convolutional Networks for Youth Fencing Footwork Training.
- Author
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Ren, Yongjun, Sang, Huinan, Huang, Shitao, and Qin, Xuelin
- Subjects
FOOT physiology ,MOTOR ability ,RESEARCH funding ,ARTIFICIAL intelligence ,RESEARCH evaluation ,PHYSICAL training & conditioning ,ATHLETES ,STATURE ,ARTIFICIAL neural networks ,SPORTS events ,BODY movement ,ACCURACY ,AUTOMATION ,FENCING ,ALGORITHMS ,ADOLESCENCE - Abstract
Purpose: The popularity of fencing and intense sports competition has burdened adolescents with excessive training, harming their immature bodies. Traditional training methods fail to provide timely movement corrections and personalized plans, leading to ineffective exercises. This paper aims to use artificial intelligence technology to reduce ineffective exercises and alleviate the training burden. Methods: We propose an action recognition algorithm based on the characteristics of adolescent athletes. This algorithm uses multimodal input data to comprehensively extract action information. Each modality is processed by the same network structure, utilizing attention mechanisms and adaptive graph structures. A multibranch feature fusion method is used to determine the final action category. Results: We gathered the fencing footwork data set 2.0. Our model achieved 93.3% accuracy, with the highest precision at 95.8% and the highest F1-Score at 94.5% across all categories. It effectively recognized actions of adolescents with different heights and speeds, outperforming traditional methods. Conclusion: Our artificial intelligence-based training solution improves training efficiency and reduces the training burden on adolescents. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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