Department of Mechanical Engineering, Sogang University, 35 Baekbeom-ro, Mapo-gu, Seoul 04107, Korea.
Sensors (Basel). 2021 Jun 18;21(12):4204. doi: 10.3390/s21124204.
Classification of terrain is a vital component in giving suitable control to a walking assistive device for the various walking conditions. Although surface electromyography (sEMG) signals have been combined with inputs from other sensors to detect walking intention, no study has yet classified walking environments using sEMG only. Therefore, the purpose of this study is to classify the current walking environment based on the entire sEMG profile gathered from selected muscles in the lower extremities. The muscle activations of selected muscles in the lower extremities were measured in 27 participants while they walked over flat-ground, upstairs, downstairs, uphill, and downhill. An artificial neural network (ANN) was employed to classify these walking environments using the entire sEMG profile recorded for all muscles during the stance phase. The result shows that the ANN was able to classify the current walking environment with high accuracy of 96.3% when using activation from all muscles. When muscle activation from flexor/extensor groups in the knee, ankle, and metatarsophalangeal joints were used individually to classify the environment, the triceps surae muscle activation showed the highest classification accuracy of 88.9%. In conclusion, a current walking environment was classified with high accuracy using an ANN based on only sEMG signals.
地形分类是为各种行走条件的助行设备提供合适控制的重要组成部分。虽然表面肌电(sEMG)信号已经与来自其他传感器的输入相结合,以检测行走意图,但迄今为止,尚无仅使用 sEMG 对行走环境进行分类的研究。因此,本研究的目的是基于从下肢选定肌肉采集的整个 sEMG 图谱来分类当前的行走环境。在 27 名参与者行走平地、上下楼梯、上下坡时,测量了下肢选定肌肉的肌肉激活情况。使用在站立阶段记录的所有肌肉的整个 sEMG 图谱,人工神经网络(ANN)用于对这些行走环境进行分类。结果表明,当使用所有肌肉的激活情况时,ANN 能够以 96.3%的高精度对当前行走环境进行分类。当使用膝关节、踝关节和跖趾关节的屈肌/伸肌组的肌肉激活情况分别对环境进行分类时,小腿三头肌的激活情况显示出最高的 88.9%的分类准确性。总之,使用基于仅 sEMG 信号的 ANN 可以高精度地对当前行走环境进行分类。