Al-Timemy Ali H, Khushaba Rami N, Escudero Javier
Annu Int Conf IEEE Eng Med Biol Soc. 2016 Aug;2016:315-318. doi: 10.1109/EMBC.2016.7590703.
Pattern Recognition (PR)-based EMG controllers of multi-functional upper-limb prostheses have been recently deployed on commercial state-of-the-art prostheses, offering intuitive control with the ability to control large number of movements with fast reaction time. Current challenges with such PR systems include the lack of training and deployment protocols that can help optimize the system's performance based on amputees' needs. Selecting the best subset of movements that each individual amputee can perform will help to exclude movements that have poor performance so that a subject-specific training can be achieved. In this paper, we propose to select the best set of movements that each amputee can perform as well as identifying the movements for which the PR system would have the worst performance and, therefore, would require further training. Unlike previous studies in this direction, different feature extraction and classification methods were utilized to examine if the choice of features/classifiers could affect the best movements subset selection. We performed our experiments on EMG signals collected from four transradial amputees with an accuracy > 97.5% on average across all subjects for the selection of best subset of movements.
基于模式识别(PR)的多功能上肢假肢肌电控制器最近已应用于商业先进假肢,提供直观控制,能够以快速反应时间控制大量动作。此类PR系统当前面临的挑战包括缺乏训练和部署协议,这些协议有助于根据截肢者的需求优化系统性能。选择每个截肢个体能够执行的最佳动作子集将有助于排除表现不佳的动作,从而实现针对特定个体的训练。在本文中,我们建议选择每个截肢者能够执行的最佳动作集,同时识别PR系统性能最差、因此需要进一步训练的动作。与以往该方向的研究不同,我们利用了不同的特征提取和分类方法来检验特征/分类器的选择是否会影响最佳动作子集的选择。我们对四名经桡骨截肢者采集的肌电信号进行了实验,在所有受试者中,选择最佳动作子集的平均准确率>97.5%。