School of Mechanical Engineering and Automation, Fuzhou University, No.2 Xueyuan Road, Fuzhou 350116, China.
Sensors (Basel). 2021 Nov 19;21(22):7713. doi: 10.3390/s21227713.
The surface Electromyography (sEMG) signal contains information about movement intention generated by the human brain, and it is the most intuitive and common solution to control robots, orthotics, prosthetics and rehabilitation equipment. In recent years, gesture decoding based on sEMG signals has received a lot of research attention. In this paper, the effects of muscle fatigue, forearm angle and acquisition time on the accuracy of gesture decoding were researched. Taking 11 static gestures as samples, four specific muscles (i.e., superficial flexor digitorum (SFD), flexor carpi ulnaris (FCU), extensor carpi radialis longus (ECRL) and finger extensor (FE)) were selected to sample sEMG signals. Root Mean Square (RMS), Waveform Length (WL), Zero Crossing (ZC) and Slope Sign Change (SSC) were chosen as signal eigenvalues; Linear Discriminant Analysis (LDA) and Probabilistic Neural Network (PNN) were used to construct classification models, and finally, the decoding accuracies of the classification models were obtained under different influencing elements. The experimental results showed that the decoding accuracy of the classification model decreased by an average of 7%, 10%, and 13% considering muscle fatigue, forearm angle and acquisition time, respectively. Furthermore, the acquisition time had the biggest impact on decoding accuracy, with a maximum reduction of nearly 20%.
表面肌电图(sEMG)信号包含了由人脑产生的运动意图信息,它是控制机器人、矫形器、假肢和康复设备最直观和常用的解决方案。近年来,基于 sEMG 信号的手势解码受到了广泛的关注。本文研究了肌肉疲劳、前臂角度和采集时间对手势解码准确性的影响。以 11 个静态手势为样本,选取了 4 块特定肌肉(即指浅屈肌(SFD)、尺侧腕屈肌(FCU)、桡侧腕伸肌长(ECRL)和指伸肌(FE))来采集 sEMG 信号。均方根值(RMS)、波形长度(WL)、过零(ZC)和斜率变化(SSC)被选为信号特征值;线性判别分析(LDA)和概率神经网络(PNN)被用来构建分类模型,最后得到在不同影响因素下分类模型的解码准确率。实验结果表明,考虑肌肉疲劳、前臂角度和采集时间,分类模型的解码准确率分别平均下降了 7%、10%和 13%。此外,采集时间对解码准确率的影响最大,最大降幅接近 20%。