低成本惯性运动跟踪器的验证

S. Salehi, D. Stricker
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引用次数: 2

摘要

这项工作验证了低成本惯性跟踪服在力量运动监测中的应用。该程序包括身体- imu校准的离线处理和下体运动的在线跟踪和识别。我们从以往的工作中提出了一种适合体- imu校准方法的最佳运动模式。在这里,为了重现真实的极端情况,重点是高加速度的运动。对于这种运动,引入了一种不需要加速度计测量的最优方向跟踪方法,从而使异常值误差最小化。该在线跟踪算法基于扩展卡尔曼滤波(EKF),该算法估计上下腿的位置以及髋关节和膝关节的角度。该方法在标定过程中应用估计值,即关节轴和位置,以及下体的生物力学约束。因此,它不需要辅助传感器,如磁力计。该算法使用光学跟踪器对两种类型的运动进行评估:深蹲和髋关节内收,平均均方根误差(RMSE)为9cm。此外,这项工作提出了一种个性化的运动识别方法,其中应用了在线模板匹配算法,并使用零速度交叉(ZVC)进行特征提取。这样可以将执行时间减少到93%,并将准确率提高到33%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Validation of a Low-cost Inertial Exercise Tracker
This work validates the application of a low-cost inertial tracking suit, for strength exercise monitoring. The procedure includes an offline processing for body-IMU calibration and an online tracking and identification of lower body motion. We proposed an optimal movement pattern for the body-IMU calibration method from our previous work. Here, in order to reproduce real extreme situations, the focus is on the movements with high acceleration. For such movements, an optimal orientation tracking approach is introduced, which requires no accelerometer measurements and it thus minimizes error due to outliers. The online tracking algorithm is based on an extended Kalman filter(EKF), which estimates the position of upper and lower legs, along with hip and knee joint angles. This method applies the estimated values in the calibration process i.e. joint axes and positions, as well as biomechanical constraints of lower body. Therefore it requires no aiding sensors such as magnetometer. The algorithm is evaluated using optical tracker for two types of exercises: squat and hip abd/adduction which resulted average root mean square error(RMSE) of 9cm. Additionally, this work presents a personalized exercise identification approach, where an online template matching algorithm is applied and optimised using zero velocity crossing(ZVC) for feature extraction. This results reducing the execution time to 93% and improving the accuracy up to 33%.
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