Wang Xuan, Hu Yu Hen, Lu Ming-Lun, Radwin Robert G
University of Wisconsin-Madison, Wisconsin, USA.
National Institute for Occupational Safety and Health, Ohio, USA.
IEEE Trans Hum Mach Syst. 2021 Dec;51(6):734-739. doi: 10.1109/thms.2021.3112962.
A robust computer vision-based approach is developed to estimate the load asymmetry angle defined in the revised NIOSH lifting equation (RNLE). The angle of asymmetry enables the computation of a recommended weight limit for repetitive lifting operations in a workplace to prevent lower back injuries. An open-source package OpenPose is applied to estimate the 2D locations of skeletal joints of the worker from two synchronous videos. Combining these joint location estimates, a computer vision correspondence and depth estimation method is developed to estimate the 3D coordinates of skeletal joints during lifting. The angle of asymmetry is then deduced from a subset of these 3D positions. Error analysis reveals unreliable angle estimates due to occlusions of upper limbs. A robust angle estimation method that mitigates this challenge is developed. We propose a method to flag unreliable angle estimates based on the average confidence level of 2D joint estimates provided by OpenPose. An optimal threshold is derived that balances the percentage variance reduction of the estimation error and the percentage of angle estimates flagged. Tested with 360 lifting instances in a NIOSH-provided dataset, the standard deviation of angle estimation error is reduced from 10.13° to 4.99°. To realize this error variance reduction, 34% of estimated angles are flagged and require further validation.
开发了一种基于计算机视觉的强大方法,用于估计修订后的美国国家职业安全与健康研究所(NIOSH)提举方程(RNLE)中定义的负荷不对称角度。不对称角度能够计算工作场所重复性提举操作的推荐重量限制,以防止下背部受伤。应用开源软件包OpenPose从两个同步视频中估计工人骨骼关节的二维位置。结合这些关节位置估计值,开发了一种计算机视觉对应和深度估计方法,以估计提举过程中骨骼关节的三维坐标。然后从这些三维位置的一个子集中推导出不对称角度。误差分析表明,由于上肢遮挡,角度估计不可靠。因此开发了一种能够缓解这一挑战的鲁棒角度估计方法。我们提出了一种基于OpenPose提供的二维关节估计平均置信度来标记不可靠角度估计的方法。推导出一个最佳阈值,该阈值平衡了估计误差的百分比方差减少量和标记的角度估计百分比。在NIOSH提供的数据集中对360个提举实例进行测试后,角度估计误差的标准差从10.13°降至4.99°。为了实现这种误差方差的减少,34%的估计角度被标记,需要进一步验证。