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A Deep Neural Network-based method for estimation of 3D lifting motions

机译:基于深度神经网络的3D提升运动方法方法

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The aim of this study is developing and validating a Deep Neural Network (DNN) based method for 3D pose estimation during lifting. The proposed DNN based method addresses problems associated with marker-based motion capture systems like excessive preparation time, movement obstruction, and controlled environment requirement. Twelve healthy adults participated in a protocol and performed nine lifting tasks with different vertical heights and asymmetry angles. They lifted a crate and placed it on a shelf while being filmed by two camcorders and a synchronized motion capture system, which directly measured their body movement. A DNN with two-stage cascaded structure was designed to estimate subjects' 3D body pose from images captured by camcorders. Our DNN augmented Hourglass network for monocular 2D pose estimation with a novel 3D pose generator subnetwork, which synthesized information from all available views to predict accurate 3D pose. We validated the results against the marker based motion capture system as a reference and examined the method performance under different lifting conditions. The average Euclidean distance between the estimated 3D pose and reference (3D pose error) on the whole dataset was 14.72 +/- 2.96 mm. Repeated measures ANOVAs showed lifting conditions can affect the method performance e.g. 60 degrees asymmetry angle and shoulder height lifting showed higher 3D pose error compare to other lifting conditions. The results demonstrated the capability of the proposed method for 3D pose estimation with high accuracy and without limitations of marker-based motion capture systems. The proposed method may be utilized as an on-site biomechanical analysis tool. (C) 2018 Elsevier Ltd. All rights reserved.
机译:该研究的目的正在提升期间开发和验证基于深度神经网络(DNN)的3D姿态估计方法。所提出的基于DNN的方法解决了与基于标记的运动捕获系统相关的问题,如过度准备时间,运动阻塞和受控环境要求。十二名健康成年人参加了一个协议,并执行了九个提升任务,具有不同的垂直高度和不对称角度。它们抬起一个箱子,并将其放在架子上,同时被两个摄像机和同步运动捕获系统拍摄,直接测量它们的身体运动。具有两级级联结构的DNN旨在从摄像机捕获的图像估计受试者的3D体姿势。我们的DNN增强沙漏网络,用于单眼2D姿势估计,具有新颖的3D姿势发生器子网,从所有可用视图中合成信息以预测准确的3D姿势。我们将基于标记的运动捕获系统的结果验证为参考,并在不同提升条件下检查了方法性能。整个数据集上估计的3D姿势和参考(3D姿势错误)之间的平均欧几里德距离为14.72 +/- 2.96 mm。反复测量ANOVAS显示提升条件会影响方法性能。 60度不对称角度和肩部高度提升显示较高的3D姿势误差与其他提升条件相比。结果表明了具有高精度和基于标记的运动捕获系统的高精度和没有限制的3D姿态估计方法的能力。所提出的方法可用作现场的生物力学分析工具。 (c)2018年elestvier有限公司保留所有权利。

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