Functional Data Representation of Inertial Sensor-based Torso-Thigh, Knee, and Ankle Movements during Lifting.

Sol Lim, Clive D'Souza
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Abstract

This study examined the goodness-of-fit of using a sigmoid function to characterize time-series angular displacement trajectories during two-handed anterior lifting. Twenty-six participants performed two-handed anterior lifting with a low (4.5 kg) vs. high (22.7 kg) load at floor vs. knee lifting height. A sigmoid function with three parameters was fit to the torso-thigh included angle, knee flexion-extension (F-E), and ankle F-E angles in the sagittal plane obtained from body-worn inertial sensors. Mean ± SD RMSE between measured vs. fitted trajectories were 3.6 ± 2.9°, 3.9 ± 4.2°, and 2.7 ± 2.8° for the torso-thigh included angle, knee F-E, and ankle F-E angles, respectively. Findings suggest that the sigmoid function adequately describes the trajectory shape of two-handed lifting kinematics. Functional representations facilitate data aggregation and feature extraction in large time-series datasets encountered in inertial-based motion analysis and machine learning applications.

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举重过程中基于惯性传感器的躯干-大腿、膝盖和脚踝运动的功能数据表示。
本研究检验了在双手前举过程中使用s形函数表征时间序列角位移轨迹的拟合优度。26名参与者进行了双手前举,分别在地板和膝盖的高度上进行低负荷(4.5 kg)和高负荷(22.7 kg)。采用3个参数的s形函数拟合由体载惯性传感器获得的躯干-大腿夹角、膝关节屈伸角(F-E)和踝关节矢状面F-E角。躯干-大腿夹角、膝关节F-E和踝关节F-E夹角的测量轨迹与拟合轨迹之间的平均±SD RMSE分别为3.6±2.9°、3.9±4.2°和2.7±2.8°。研究结果表明,s型函数充分描述了双手升降运动的轨迹形状。函数表示有助于在基于惯性的运动分析和机器学习应用中遇到的大型时间序列数据集中的数据聚合和特征提取。
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Functional Data Representation of Inertial Sensor-based Torso-Thigh, Knee, and Ankle Movements during Lifting. Predictive Analytics and the Return of "Research" Information to Participants. Challenges in Creating a Mobile Digital Tutor for Clinical Communications Training. Effects of Actigraphically Acquired Sleep Quality on Driving Outcomes in Obstructive Sleep Apnea Patients and Control Drivers: A Naturalistic Study.
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