Rodrigo Rico Bini, Gil Serrancoli, Paulo Roberto Pereira Santiago, Allan Pinto, Felipe Moura
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引用次数: 0
摘要
目的:随着越来越多的神经网络被用于从图像和视频中估计身体部位,本研究评估了一些神经网络在评估自行车上身体位置方面的有效性。方法:14名骑自行车的人在一段时间内骑自己的自行车,并从他们的矢状面拍摄视频。使用附着在关键骨标记上的反射标记对从视频中提取的曲柄两个位置(3点钟方向和6点钟方向)的关节角度进行人工数字化(参考方法)。将这些角度与两种基于深度学习的方法(微软亚洲研究院msra和OpenPose)生成的视频测量结果进行比较,这些方法旨在自动估计人体关节。结果:OpenPose方法的平均偏差范围为0.03°~ 1.81°,MSRA方法的误差范围为2.29°~ 12.15°。在躯干(r = 0.94 vs. 0.92)、髋关节(r = 0.69 vs. 0.60)、膝关节(r = 0.80 vs. 0.71)和脚踝(r = 0.23 vs. 0.20)方面,OpenPose的相关系数比MSRA方法更强。结论:OpenPose在确定自行车上的身体位置方面比MSRA方法具有更好的准确性,但两种方法在评估自行车配置变化的影响方面似乎具有可比性。
Validity of Neural Networks to Determine Body Position on the Bicycle.
Purpose: With the increased access to neural networks trained to estimate body segments from images and videos, this study assessed the validity of some of these networks in enabling the assessment of body position on the bicycle. Methods: Fourteen cyclists pedaled stationarily in one session on their own bicycles while video was recorded from their sagittal plane. Reflective markers attached to key bony landmarks were used to manually digitize joint angles at two positions of the crank (3 o'clock and 6 o'clock) extracted from the videos (Reference method). These angles were compared to measurements taken from videos generated by two deep learning-based approaches designed to automatically estimate human joints (Microsoft Research Asia-MSRA and OpenPose). Results: Mean bias for OpenPose ranged between 0.03° and 1.81°, while the MSRA method presented errors between 2.29° and 12.15°. Correlation coefficients were stronger for OpenPose than for the MSRA method in relation to the Reference method for the torso (r = 0.94 vs. 0.92), hip (r = 0.69 vs. 0.60), knee (r = 0.80 vs. 0.71), and ankle (r = 0.23 vs. 0.20). Conclusion: OpenPose presented better accuracy than the MSRA method in determining body position on the bicycle, but both methods seem comparable in assessing implications from changes in bicycle configuration.
期刊介绍:
Research Quarterly for Exercise and Sport publishes research in the art and science of human movement that contributes significantly to the knowledge base of the field as new information, reviews, substantiation or contradiction of previous findings, development of theory, or as application of new or improved techniques. The goals of RQES are to provide a scholarly outlet for knowledge that: (a) contributes to the study of human movement, particularly its cross-disciplinary and interdisciplinary nature; (b) impacts theory and practice regarding human movement; (c) stimulates research about human movement; and (d) provides theoretical reviews and tutorials related to the study of human movement. The editorial board, associate editors, and external reviewers assist the editor-in-chief. Qualified reviewers in the appropriate subdisciplines review manuscripts deemed suitable. Authors are usually advised of the decision on their papers within 75–90 days.