Tang Lyndon, Shushtari Mohammad, Arami Arash
Department of Mechanical and Mechatronics Engineering, University of Waterloo, Waterloo, ON N2L 3G1, Canada.
KITE Institute, University Health Network, Toronto, ON M5G 2A2, Canada.
Sensors (Basel). 2024 Apr 9;24(8):2390. doi: 10.3390/s24082390.
This work presents a real-time gait phase estimator using thigh- and shank-mounted inertial measurement units (IMUs). A multi-rate convolutional neural network (CNN) was trained to estimate gait phase for a dataset of 16 participants walking on an instrumented treadmill with speeds varying between 0.1 to 1.9 m/s, and conditions such as asymmetric walking, stop-start, and sudden speed changes. One-subject-out cross-validation was used to assess the robustness of the estimator to the gait patterns of new individuals. The proposed model had a spatial root mean square error of 5.00±1.65%, and a temporal mean absolute error of 2.78±0.97% evaluated at the heel strike. A second cross-validation was performed to show that leaving out any of the walking conditions from the training dataset did not result in significant performance degradation. A 2-sample Kolmogorov-Smirnov test showed that there was no significant increase in spatial or temporal error when testing on the abnormal walking conditions left out of the training set. The results of the two cross-validations demonstrate that the proposed model generalizes well across new participants, various walking speeds, and gait patterns, showcasing its potential for use in investigating patient populations with pathological gaits and facilitating robot-assisted walking.
这项工作提出了一种使用安装在大腿和小腿上的惯性测量单元(IMU)的实时步态阶段估计器。训练了一个多速率卷积神经网络(CNN),以估计16名参与者在仪器化跑步机上行走的数据集的步态阶段,行走速度在0.1至1.9米/秒之间变化,以及诸如不对称行走、启停和突然速度变化等情况。采用留一法交叉验证来评估估计器对新个体步态模式的鲁棒性。所提出的模型在足跟触地时评估的空间均方根误差为5.00±1.65%,时间平均绝对误差为2.78±0.97%。进行了第二次交叉验证,以表明从训练数据集中排除任何一种行走条件都不会导致显著的性能下降。两样本柯尔莫哥洛夫-斯米尔诺夫检验表明,在训练集中遗漏的异常行走条件下进行测试时,空间或时间误差没有显著增加。两次交叉验证的结果表明,所提出的模型在新参与者、各种行走速度和步态模式中具有良好的泛化能力,展示了其在研究患有病理性步态的患者群体以及促进机器人辅助行走方面的应用潜力。