Digital human and embodied intelligence for sports science: advancements, opportunities and prospects

Xiang Suo, Weidi Tang, Lijuan Mao, Zhen Li
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Abstract

This paper presents a comprehensive review of state-of-the-art motion capture techniques for digital human modeling in sports, including traditional optical motion capture systems, wearable sensor capture systems, computer vision capture systems, and fusion motion capture systems. The review explores the strengths, limitations, and applications of each technique in the context of sports science, such as performance analysis, technique optimization, injury prevention, and interactive training. The paper highlights the significance of accurate and comprehensive motion data acquisition for creating high-fidelity digital human models that can replicate an athlete’s movements and biomechanics. However, several challenges and limitations are identified, such as limited capture volume, marker occlusion, accuracy limitations, lack of diverse datasets, and computational complexity. To address these challenges, the paper emphasizes the need for collaborative efforts from researchers and practitioners across various disciplines. By bridging theory and practice and identifying application-specific challenges and solutions, this review aims to facilitate cross-disciplinary collaboration and guide future research and development efforts in harnessing the power of digital human technology for sports science advancement, ultimately unlocking new possibilities for athlete performance optimization and health.

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运动科学中的数字人类和体现智能:进步、机遇和前景
本文全面评述了用于运动中数字人体建模的最先进的运动捕捉技术,包括传统光学运动捕捉系统、可穿戴传感器捕捉系统、计算机视觉捕捉系统和融合运动捕捉系统。综述探讨了每种技术的优势、局限性以及在运动科学中的应用,如成绩分析、技术优化、损伤预防和互动训练。论文强调了准确而全面的运动数据采集对于创建高保真数字人体模型的重要意义,该模型可以复制运动员的运动和生物力学。然而,本文也指出了一些挑战和局限性,例如捕获量有限、标记闭塞、精度限制、缺乏多样化数据集以及计算复杂性。为了应对这些挑战,本文强调需要各学科研究人员和从业人员的通力合作。通过沟通理论与实践,确定特定应用的挑战和解决方案,本综述旨在促进跨学科合作,指导未来的研究和开发工作,利用数字人体技术的力量促进体育科学的发展,最终为运动员的表现优化和健康开启新的可能性。
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