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基于单摄像头视图无标记3D姿态估计的运动量化

Exercise quantification from single camera view markerless 3D pose estimation.

作者信息

Mercadal-Baudart Clara, Liu Chao-Jung, Farrell Garreth, Boyne Molly, González Escribano Jorge, Smolic Aljosa, Simms Ciaran

机构信息

Trinity College Dublin, Ireland.

Leinster Rugby, Ireland.

出版信息

Heliyon. 2024 Mar 12;10(6):e27596. doi: 10.1016/j.heliyon.2024.e27596. eCollection 2024 Mar 30.

Abstract

Sports physiotherapists and coaches are tasked with evaluating the movement quality of athletes across the spectrum of ability and experience. However, the accuracy of visual observation is low and existing technology outside of expensive lab-based solutions has limited adoption, leading to an unmet need for an efficient and accurate means to measure static and dynamic joint angles during movement, converted to movement metrics useable by practitioners. This paper proposes a set of pose landmarks for computing frequently used joint angles as metrics of interest to sports physiotherapists and coaches in assessing common strength-building human exercise movements. It then proposes a set of rules for computing these metrics for a range of common exercises (single and double drop jumps and counter-movement jumps, deadlifts and various squats) from anatomical key-points detected using video, and evaluates the accuracy of these using a published 3D human pose model trained with ground truth data derived from VICON motion capture of common rehabilitation exercises. Results show a set of mathematically defined metrics which are derived from the chosen pose landmarks, and which are sufficient to compute the metrics for each of the exercises under consideration. Comparison to ground truth data showed that root mean square angle errors were within 10° for all exercises for the following metrics: shin angle, knee varus/valgus and left/right flexion, hip flexion and pelvic tilt, trunk angle, spinal flexion lower/upper/mid and rib flare. Larger errors (though still all within 15°) were observed for shoulder flexion and ASIS asymmetry in some exercises, notably front squats and drop-jumps. In conclusion, the contribution of this paper is that a set of sufficient key-points and associated metrics for exercise assessment from 3D human pose have been uniquely defined. Further, we found generally very good accuracy of the Strided Transformer 3D pose model in predicting these metrics for the chosen set of exercises from a single mobile device camera, when trained on a suitable set of functional exercises recorded using a VICON motion capture system. Future assessment of generalization is needed.

摘要

运动物理治疗师和教练的任务是评估不同能力和经验水平运动员的运动质量。然而,视觉观察的准确性较低,并且除了昂贵的基于实验室的解决方案之外,现有技术的采用有限,导致对一种高效、准确的方法存在未满足的需求,该方法用于测量运动过程中的静态和动态关节角度,并转换为从业者可用的运动指标。本文提出了一组姿态标志点,用于计算常用的关节角度,作为运动物理治疗师和教练评估常见力量训练人体运动时感兴趣的指标。然后,本文提出了一组规则,用于根据视频检测到的解剖关键点,计算一系列常见练习(单脚和双脚下落跳、反向运动跳、硬拉和各种深蹲)的这些指标,并使用一个已发布的3D人体姿态模型评估其准确性,该模型使用从常见康复练习的VICON运动捕捉获得的地面真值数据进行训练。结果显示了一组从选定的姿态标志点导出的数学定义指标,这些指标足以计算所考虑的每个练习的指标。与地面真值数据的比较表明,对于以下指标,所有练习的均方根角度误差均在10°以内:胫骨角度、膝内翻/外翻和左右屈曲、髋部屈曲和骨盆倾斜、躯干角度、脊柱下/上/中屈曲和肋骨扩张。在一些练习中,特别是前深蹲和下落跳,观察到肩部屈曲和ASIS不对称的误差较大(尽管仍都在15°以内)。总之,本文的贡献在于独特地定义了一组用于从3D人体姿态进行运动评估的充分关键点和相关指标。此外,我们发现,当在使用VICON运动捕捉系统记录的一组合适的功能性练习上进行训练时,Strided Transformer 3D姿态模型在从单个移动设备摄像头预测选定练习集的这些指标时,通常具有非常好的准确性。未来需要对泛化进行评估。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/154e/10951609/e0a742d38304/gr1.jpg

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