Zhu Jiaju, Ye Zijun, Ren Meixue, Ma Guodong
School of Physical Education, Northeast Normal University, Changchun, Jilin, China.
College of Life and Health Sciences, The Chinese University of Hong Kong, Hong Kong, China.
Front Neurosci. 2024 Mar 28;18:1353257. doi: 10.3389/fnins.2024.1353257. eCollection 2024.
Exercise is pivotal for maintaining physical health in contemporary society. However, improper postures and movements during exercise can result in sports injuries, underscoring the significance of skeletal motion analysis. This research aims to leverage advanced technologies such as Transformer, Graph Neural Networks (GNNs), and Generative Adversarial Networks (GANs) to optimize sports training and mitigate the risk of injuries.
The study begins by employing a Transformer network to model skeletal motion sequences, facilitating the capture of global correlation information. Subsequently, a Graph Neural Network is utilized to delve into local motion features, enabling a deeper understanding of joint relationships. To enhance the model's robustness and adaptability, a Generative Adversarial Network is introduced, utilizing adversarial training to generate more realistic and diverse motion sequences.
In the experimental phase, skeletal motion datasets from various cohorts, including professional athletes and fitness enthusiasts, are utilized for validation. Comparative analysis against traditional methods demonstrates significant enhancements in specificity, accuracy, recall, and 1-score. Notably, specificity increases by ~5%, accuracy reaches around 90%, recall improves to around 91%, and the 1-score exceeds 89%.
The proposed skeletal motion analysis method, leveraging Transformer and Graph Neural Networks, proves successful in optimizing exercise training and preventing injuries. By effectively amalgamating global and local information and integrating Generative Adversarial Networks, the method excels in capturing motion features and enhancing precision and adaptability. Future research endeavors will focus on further advancing this methodology to provide more robust technological support for healthy exercise practices.
在当代社会,运动对于维持身体健康至关重要。然而,运动过程中不当的姿势和动作可能导致运动损伤,这凸显了骨骼运动分析的重要性。本研究旨在利用诸如Transformer、图神经网络(GNN)和生成对抗网络(GAN)等先进技术来优化运动训练并降低受伤风险。
该研究首先采用Transformer网络对骨骼运动序列进行建模,以促进全局相关信息的捕获。随后,利用图神经网络深入研究局部运动特征,从而更深入地理解关节关系。为提高模型的鲁棒性和适应性,引入了生成对抗网络,利用对抗训练生成更真实、多样的运动序列。
在实验阶段,来自包括职业运动员和健身爱好者在内的不同群体的骨骼运动数据集用于验证。与传统方法的比较分析表明,在特异性、准确性、召回率和F1分数方面有显著提高。值得注意的是,特异性提高了约5%,准确性达到约90%,召回率提高到约91%,F1分数超过89%。
所提出的利用Transformer和图神经网络的骨骼运动分析方法,在优化运动训练和预防损伤方面被证明是成功的。通过有效地融合全局和局部信息并整合生成对抗网络,该方法在捕捉运动特征以及提高精度和适应性方面表现出色。未来的研究将致力于进一步推进这种方法,为健康的运动实践提供更强大的技术支持。