School of Innovation, Design and Engineering, Mälardalen University, 721 23, Västerås, Sweden.
RISE Acreo AB, Isafjordsgatan 22, 164 40, Kista, Sweden.
Med Biol Eng Comput. 2020 Jan;58(1):83-100. doi: 10.1007/s11517-019-02073-z. Epub 2019 Nov 21.
Myoelectric pattern recognition (MPR) to decode limb movements is an important advancement regarding the control of powered prostheses. However, this technology is not yet in wide clinical use. Improvements in MPR could potentially increase the functionality of powered prostheses. To this purpose, offline accuracy and processing time were measured over 44 features using six classifiers with the aim of determining new configurations of features and classifiers to improve the accuracy and response time of prosthetics control. An efficient feature set (FS: waveform length, correlation coefficient, Hjorth Parameters) was found to improve the motion recognition accuracy. Using the proposed FS significantly increased the performance of linear discriminant analysis, K-nearest neighbor, maximum likelihood estimation (MLE), and support vector machine by 5.5%, 5.7%, 6.3%, and 6.2%, respectively, when compared with the Hudgins' set. Using the FS with MLE provided the largest improvement in offline accuracy over the Hudgins feature set, with minimal effect on the processing time. Among the 44 features tested, logarithmic root mean square and normalized logarithmic energy yielded the highest recognition rates (above 95%). We anticipate that this work will contribute to the development of more accurate surface EMG-based motor decoding systems for the control prosthetic hands.
肌电模式识别(MPR)解码肢体运动是控制动力假肢的重要进展。然而,这项技术尚未广泛应用于临床。MPR 的改进可能会增加动力假肢的功能。为此,使用六种分类器测量了 44 个特征的离线准确性和处理时间,目的是确定新的特征和分类器配置,以提高假肢控制的准确性和响应时间。一个有效的特征集(FS:波形长度、相关系数、Hjorth 参数)被发现可以提高运动识别的准确性。与 Hudgins 特征集相比,使用所提出的 FS 显著提高了线性判别分析、K-最近邻、最大似然估计(MLE)和支持向量机的性能,分别提高了 5.5%、5.7%、6.3%和 6.2%。当使用 MLE 与 FS 结合时,在不影响处理时间的情况下,离线准确性得到了最大的提高。在测试的 44 个特征中,对数均方根和归一化对数能量的识别率最高(超过 95%)。我们预计这项工作将有助于开发更准确的基于表面肌电的电机解码系统,以控制假肢手。