Sung Joohwan, Han Sungmin, Park Heesu, Cho Hyun-Myung, Hwang Soree, Park Jong Woong, Youn Inchan
Center for Bionics, Biomedical Research Division, Korea Institute of Science and Technology, Seoul 02792, Korea.
Department of Biomedical Science, College of Medicine, Korea University, Seoul 02841, Korea.
Sensors (Basel). 2021 Dec 22;22(1):53. doi: 10.3390/s22010053.
The joint angle during gait is an important indicator, such as injury risk index, rehabilitation status evaluation, etc. To analyze gait, inertial measurement unit (IMU) sensors have been used in studies and continuously developed; however, they are difficult to utilize in daily life because of the inconvenience of having to attach multiple sensors together and the difficulty of long-term use due to the battery consumption required for high data sampling rates. To overcome these problems, this study propose a multi-joint angle estimation method based on a long short-term memory (LSTM) recurrent neural network with a single low-frequency (23 Hz) IMU sensor. IMU sensor data attached to the lateral shank were measured during overground walking at a self-selected speed for 30 healthy young persons. The results show a comparatively good accuracy level, similar to previous studies using high-frequency IMU sensors. Compared to the reference results obtained from the motion capture system, the estimated angle coefficient of determination (R2) is greater than 0.74, and the root mean square error and normalized root mean square error (NRMSE) are less than 7° and 9.87%, respectively. The knee joint showed the best estimation performance in terms of the NRMSE and R2 among the hip, knee, and ankle joints.
步态过程中的关节角度是一个重要指标,如受伤风险指数、康复状态评估等。为了分析步态,惯性测量单元(IMU)传感器已在研究中得到应用并不断发展;然而,由于需要将多个传感器连接在一起带来的不便,以及高数据采样率所需的电池消耗导致长期使用困难,它们在日常生活中难以使用。为了克服这些问题,本研究提出了一种基于长短期记忆(LSTM)递归神经网络和单个低频(23Hz)IMU传感器的多关节角度估计方法。在30名健康年轻人以自选速度在地面行走时,测量了附着在小腿外侧的IMU传感器数据。结果显示出相对较好的准确度水平,与之前使用高频IMU传感器的研究相似。与从运动捕捉系统获得的参考结果相比,估计角度的决定系数(R2)大于0.74,均方根误差和归一化均方根误差(NRMSE)分别小于7°和9.87%。在髋关节、膝关节和踝关节中,膝关节在NRMSE和R2方面表现出最佳的估计性能。