Edriss Saeid, Romagnoli Cristian, Caprioli Lucio, Bonaiuto Vincenzo, Padua Elvira, Annino Giuseppe
Department of Industrial Engineering, Sports Engineering Laboratory, University of Rome Tor Vergata, Rome, Italy.
Department of Human Science and Promotion of Quality of Life, Human Performance, Sport Training, Health Education Laboratory, San Raffaele Open University, Rome, Italy.
Front Physiol. 2025 Aug 12;16:1649330. doi: 10.3389/fphys.2025.1649330. eCollection 2025.
Kinematic and biomechanical analysis in monitoring human movement to assess athletes' or patients' motor control behaviors. Traditional motion capture systems provide high accuracy but are expensive and complex for the public. Recent advancements in markerless systems using videos captured with commercial RGB, depth, and infrared cameras, such as Microsoft Kinect, StereoLabs ZED Camera, and Intel RealSense, enable the acquisition of high-quality videos for 2D and 3D kinematic analyses. On the other hand, open-source frameworks like OpenPose, MediaPipe, AlphaPose, and DensePose are the new generation of 2D or 3D mesh-based markerless motion tools that utilize standard cameras in motion analysis through real-time and offline pose estimation models in sports, clinical, and gaming applications. The review examined studies that focused on the validity and reliability of these technologies compared to gold-standard systems, specifically in sports and exercise applications. Additionally, it discusses the optimal setup and perspectives for achieving accurate results in these studies. The findings suggest that 2D systems offer economic and straightforward solutions, but they still face limitations in capturing out-of-plane movements and environmental factors. Merging vision sensors with built-in artificial intelligence and machine learning software to create 2D-to-3D pose estimation is highlighted as a promising method to address these challenges, supporting the broader adoption of markerless motion analysis in future kinematic and biomechanical research.
运动学和生物力学分析在监测人体运动以评估运动员或患者的运动控制行为方面的应用。传统的运动捕捉系统精度高,但对公众来说昂贵且复杂。使用商用RGB、深度和红外摄像机(如微软Kinect、StereoLabs ZED相机和英特尔实感)拍摄的视频的无标记系统的最新进展,使得能够获取用于二维和三维运动学分析的高质量视频。另一方面,像OpenPose、MediaPipe、AlphaPose和DensePose这样的开源框架是新一代基于二维或三维网格的无标记运动工具,它们通过运动分析中的实时和离线姿态估计模型,在体育、临床和游戏应用中利用标准相机。该综述研究了与金标准系统相比,这些技术在有效性和可靠性方面的研究,特别是在体育和运动应用中。此外,它还讨论了在这些研究中获得准确结果的最佳设置和前景。研究结果表明,二维系统提供了经济且直接的解决方案,但在捕捉平面外运动和环境因素方面仍面临局限性。将视觉传感器与内置人工智能和机器学习软件相结合以创建二维到三维姿态估计,被视为应对这些挑战的一种有前途的方法,支持无标记运动分析在未来运动学和生物力学研究中的更广泛应用。