首页> 美国卫生研究院文献>Sensors (Basel Switzerland) >Are Existing Monocular Computer Vision-Based 3D Motion Capture Approaches Ready for Deployment? A Methodological Study on the Example of Alpine Skiing
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Are Existing Monocular Computer Vision-Based 3D Motion Capture Approaches Ready for Deployment? A Methodological Study on the Example of Alpine Skiing

机译:现有的基于单眼计算机视觉的3D运动捕捉方法是否已准备好进行部署?高山滑雪范例的方法论研究

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摘要

In this study, we compared a monocular computer vision (MCV)-based approach with the golden standard for collecting kinematic data on ski tracks (i.e., video-based stereophotogrammetry) and assessed its deployment readiness for answering applied research questions in the context of alpine skiing. The investigated MCV-based approach predicted the three-dimensional human pose and ski orientation based on the image data from a single camera. The data set used for training and testing the underlying deep nets originated from a field experiment with six competitive alpine skiers. The normalized mean per joint position error of the MVC-based approach was found to be 0.08 ± 0.01 m. Knee flexion showed an accuracy and precision (in parenthesis) of 0.4 ± 7.1° (7.2 ± 1.5°) for the outside leg, and −0.2 ± 5.0° (6.7 ± 1.1°) for the inside leg. For hip flexion, the corresponding values were −0.4 ± 6.1° (4.4° ± 1.5°) and −0.7 ± 4.7° (3.7 ± 1.0°), respectively. The accuracy and precision of skiing-related metrics were revealed to be 0.03 ± 0.01 m (0.01 ± 0.00 m) for relative center of mass position, −0.1 ± 3.8° (3.4 ± 0.9) for lean angle, 0.01 ± 0.03 m (0.02 ± 0.01 m) for center of mass to outside ankle distance, 0.01 ± 0.05 m (0.03 ± 0.01 m) for fore/aft position, and 0.00 ± 0.01 m (0.01 ± 0.00 m ) for drag area. Such magnitudes can be considered acceptable for detecting relevant differences in the context of alpine skiing.
机译:在这项研究中,我们将基于单眼计算机视觉(MCV)的方法与在滑雪道上收集运动学数据(即基于视频的立体摄影测量法)的黄金标准进行了比较,并评估了其部署准备情况,以回答高山环境下的应用研究问题滑雪。基于MCV的研究方法基于单个摄像机的图像数据预测了三维人体姿势和滑雪方向。用于训练和测试基础深网的数据集来自于六个高山滑雪运动员的野外实验。发现基于MVC的方法的每个关节位置误差的标准化平均为0.08±0.01 m。膝盖屈曲的准确度和精确度(用括号括起来)对于外腿为0.4±7.1°(7.2±1.5°),对于内腿为-0.2±5.0°(6.7±1.1°)。对于髋部屈曲,相应的值分别为-0.4±6.1°(4.4°±1.5°)和-0.7±4.7°(3.7±1.0°)。与滑雪相关的度量标准的准确性和精密度被证明是相对重心位置为0.03±0.01 m(0.01±0.00 m),倾斜角为-0.1±3.8°(3.4±0.9),0.01±0.03 m(0.02重心到外踝的距离为±0.01 m),前/后位置为0.01±0.05 m(0.03±0.01 m),阻力区域为0.00±0.01 m(0.01±0.00 m)。对于检测高山滑雪环境中的相关差异,可以认为这样的幅度是可以接受的。

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