Experimental Setup for Markerless Motion Capture and Landmarks Detection using OpenPose During Dynamic Gait Index Measurement

Normurniyati Abd Shattar, K. B. Gan, Noor Syazwana Abd Aziz
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引用次数: 3

Abstract

The majority of motion analysis tools used in sports biomechanics and rehabilitation do not provide autonomous kinematic data collection without the use of markers, experimental settings, or extensive processing durations. These limits can make it difficult to employ motion capture in routine training or rehabilitation situations and there is an evident need for the development of automated markerless systems. It is vital to select the right technical equipment and algorithms for accurate markerless motion capture. This paper discusses the markerless human motion capture method for landmark detection using the open-source library OpenPose during the Modified Dynamic Gait Index (m-DGI) assessment. The m-DGI research covered the following phases: gait level surface, change in gait speed, gait with horizontal head turns and gait with vertical head turns. The four stages in m-DGI were captured using two Canon EOS 90D DSLR cameras. The videos were recorded in frontal and side views (subjects moved toward the front camera) and the source code of OpenPose's human skeleton identification system can extract the image into a sequence of frames from the recorded video. This method processes every frame of extracted images in OpenCV-Python to detect the human skeleton key points. The application of this methodology in research and clinical practice has the potential to provide easy, time-efficient, and perhaps more relevant assessments of human mobility.
基于OpenPose的无标记运动捕捉与动态步态指标检测实验研究
在运动生物力学和康复中使用的大多数运动分析工具在没有使用标记、实验设置或大量处理持续时间的情况下不能提供自主的运动学数据收集。这些限制使得在常规训练或康复情况下使用动作捕捉变得困难,因此显然需要开发自动无标记系统。选择合适的技术设备和算法是实现准确无标记运动捕捉的关键。本文讨论了利用开源库OpenPose在改进动态步态指数(m-DGI)评估过程中进行地标检测的无标记人体动作捕捉方法。m-DGI研究包括以下阶段:步态水平面、步态速度变化、水平转头步态和垂直转头步态。m-DGI的四个阶段是用两台佳能EOS 90D单反相机拍摄的。视频分别在正面和侧面拍摄(受试者向前摄像头移动),OpenPose人体骨骼识别系统的源代码可以从录制的视频中提取图像到一系列帧中。该方法在OpenCV-Python中对提取的每一帧图像进行处理,检测人体骨架关键点。该方法在研究和临床实践中的应用有可能提供简单、省时、可能更相关的人体活动能力评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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