IEEE J Biomed Health Inform. 2022 Jul;26(7):2854-2863. doi: 10.1109/JBHI.2022.3173968. Epub 2022 Jul 1.
Human motion recognition with high accuracy and fast response speed has long been considered an essential component in human-machine interactive activities such as assistive robotics, medical prosthesis, and wearable electronics. The force myography (FMG) signal has been the focus of much investigation in the search for a reliable and efficient muscular locomotion recognition system. However, the effect of the sensing system on FMG-based locomotion classification accuracy has yet to be understood. This study proposed a novel FMG sensing strategy for human lower limb locomotion classification based on flexible supercapacitive iontronic sensors. Benefiting from the ultrahigh sensitivity (up to 1 nF/mmHg) and low activation pressure (less than 5 mmHg) of the supercapacitive iontronic pressure sensor, FMG signal can be acquired accurately from 5 iontronic sensors strapped to the thigh. In the experiment with 12 subjects, the real-time classification strategy based on sliding window and SVM model gave an average locomotion classification accuracy of 99% for seven categories, including sitting, standing, walking on level ground, ramp ascent, ramp descent, stair ascent, stair descent. Compared with traditional FSR sensors, the result showed that iontronic sensors improved the classification accuracy by up to 10 percentage points in the case of short time window. The implementation of the high sensitivity flexible iontronic sensors in the wearable system brings a valuable tool for detecting small human body pressure signals and has great potential to improve the performance of the human-machine interface in rehabilitation and medical applications.
具有高精度和快速响应速度的人体运动识别一直被认为是辅助机器人、医疗假肢和可穿戴电子等人机交互活动的重要组成部分。力肌电图(FMG)信号一直是研究可靠和高效肌肉运动识别系统的焦点。然而,传感系统对基于 FMG 的运动分类准确性的影响尚未被理解。本研究提出了一种基于柔性超级电容离子电子传感器的新型 FMG 传感策略,用于人体下肢运动分类。得益于超级电容离子电子压力传感器的超高灵敏度(高达 1 nF/mmHg)和低激活压力(小于 5 mmHg),可以从绑在大腿上的 5 个离子电子传感器准确地获取 FMG 信号。在 12 名受试者的实验中,基于滑动窗口和 SVM 模型的实时分类策略对包括坐、站、平地行走、斜坡上升、斜坡下降、楼梯上升和楼梯下降在内的七个类别的运动分类准确率达到 99%。与传统的 FSR 传感器相比,在短时间窗口的情况下,离子电子传感器将分类准确率提高了高达 10 个百分点。在可穿戴系统中实施高灵敏度柔性离子电子传感器为检测人体微小压力信号提供了有价值的工具,并且在康复和医疗应用中改善人机界面的性能方面具有很大的潜力。