Faculty of Science and Engineering, Waseda University, Tokyo 1690051, Japan.
Department of Modern Mechanical Engineering, Waseda University, Tokyo 1690051, Japan.
Sensors (Basel). 2022 Jun 19;22(12):4632. doi: 10.3390/s22124632.
To give people more specific information on the quality of their daily motion, it is necessary to continuously measure muscular activity during everyday occupations in an easy way. The traditional methods to measure muscle activity using a combination of surface electromyography (sEMG) sensors and optical motion capture system are expensive and not suitable for non-technical users and unstructured environment. For this reason, in our group we are researching methods to estimate leg muscle activity using non-contact wearable sensors, improving ease of movement and system usability. In a previous study, we developed a method to estimate muscle activity via only a single inertial measurement unit (IMU) on the shank. In this study, we describe a method to estimate muscle activity during walking via two IMU sensors, using an original sensing system and specifically developed estimation algorithms based on ANN techniques. The muscle activity estimation results, estimated by the proposed algorithm after optimization, showed a relatively high estimation accuracy with a correlation efficient of = 0.48 and a standard deviation STD = 0.10, with a total system average delay of 192 ms. As the average interval between different gait phases in human gait is 250-1000 ms, a 192 ms delay is still acceptable for daily walking requirements. For this reason, compared with the previous study, the newly proposed system presents a higher accuracy and is better suitable for real-time leg muscle activity estimation during walking.
为了向人们提供更具体的日常运动质量信息,有必要以简单的方式持续测量日常活动中的肌肉活动。使用表面肌电图(sEMG)传感器和光学运动捕捉系统组合来测量肌肉活动的传统方法既昂贵又不适合非技术用户和非结构化环境。出于这个原因,我们小组正在研究使用非接触式可穿戴传感器来估计腿部肌肉活动的方法,以提高运动的便利性和系统的可用性。在之前的研究中,我们开发了一种仅通过小腿上的单个惯性测量单元(IMU)来估计肌肉活动的方法。在本研究中,我们描述了一种使用原始感测系统和基于人工神经网络(ANN)技术专门开发的估计算法,通过两个 IMU 传感器来估计行走时肌肉活动的方法。经过优化后,由提出的算法估计的肌肉活动估计结果显示出相对较高的估计准确性,相关系数为 = 0.48,标准偏差 STD = 0.10,总系统平均延迟为 192 毫秒。由于人类步态中不同步态阶段之间的平均间隔为 250-1000 毫秒,因此 192 毫秒的延迟仍然可以满足日常行走的要求。因此,与之前的研究相比,新提出的系统具有更高的准确性,更适合在行走时实时估计腿部肌肉活动。