Leone Francesca, Mereu Federico, Gentile Cosimo, Cordella Francesca, Gruppioni Emanuele, Zollo Loredana
Advanced Robotics and Human-Centred Technologies, Department at University Campus Bio-Medico of Rome, Rome, Italy.
Istituto Nazionale Assicurazione Infortuni sul Lavoro (INAIL) Prosthetic Center, Vigorso, BO, Italy.
Front Neurorobot. 2023 Mar 9;17:1092006. doi: 10.3389/fnbot.2023.1092006. eCollection 2023.
The myoelectric control strategy, based on surface electromyographic signals, has long been used for controlling a prosthetic system with multiple degrees of freedom. Several methods classify gestures and force levels but the simultaneous real-time control of hand/wrist gestures and force levels did not yet reach a satisfactory level of effectiveness.
In this work, the hierarchical classification approach, already validated on 31 healthy subjects, was adapted for the real-time control of a multi-DoFs prosthetic system on 15 trans-radial amputees. The effectiveness of the hierarchical classification approach was assessed by evaluating both offline and real-time performance using three algorithms: Logistic Regression (LR), Non-linear Logistic Regression (NLR), and Linear Discriminant Analysis (LDA).
The results of this study showed the offline performance of amputees was promising and comparable to healthy subjects, with mean F1 scores of over 90% for the "Hand/wrist gestures classifier" and 95% for the force classifiers, implemented with the three algorithms with features extraction (FE). Another significant finding of this study was the feasibility of using the hierarchical classification strategy for real-time applications, due to its ability to provide a response time of 100 ms while maintaining an average online accuracy of above 90%.
A possible solution for real-time control of both hand/wrist gestures and force levels is the combined use of the LR algorithm with FE for the "Hand/wrist gestures classifier", and the NLR with FE for the Spherical and Tip force classifiers.
基于表面肌电信号的肌电控制策略长期以来一直用于控制具有多个自由度的假肢系统。有几种方法可对手势和力水平进行分类,但对手部/腕部手势和力水平的同时实时控制尚未达到令人满意的有效水平。
在这项研究中,已在31名健康受试者身上得到验证的分层分类方法被应用于15名经桡骨截肢者的多自由度假肢系统的实时控制。通过使用逻辑回归(LR)、非线性逻辑回归(NLR)和线性判别分析(LDA)这三种算法评估离线和实时性能,来评估分层分类方法的有效性。
本研究结果表明,截肢者的离线性能很有前景,与健康受试者相当,使用三种带有特征提取(FE)算法实现的“手部/腕部手势分类器”的平均F1分数超过90%,力分类器的平均F1分数为95%。本研究的另一个重要发现是,分层分类策略用于实时应用是可行的,因为它能够在保持平均在线准确率高于90%的同时提供100毫秒的响应时间。
对手部/腕部手势和力水平进行实时控制的一种可能解决方案是,将LR算法与FE结合用于“手部/腕部手势分类器”,将NLR与FE结合用于球形和尖端力分类器。