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A Neuro–Fuzzy Inference System for sEMG-Based Identification of Hand Motion Commands

机译:用于基于sEMG的手势识别的神经模糊推理系统

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摘要

Surface electromyogram (sEMG) signals, a noninvasive bioelectric signal, can be used for the rehabilitation and control of artificial extremities. Current sEMG pattern-recognition systems suffer from a limited number of patterns that are frequently intensified by the unsuitable accuracy of the instrumentation and analytical system. To solve these problems, we designed a multistep-based sEMG pattern-recognition system where, in each step, a stronger more capable relevant technique with a noticeable improved performance is employed. In this paper, we utilized the sEMG signals to classify and recognize six classes of hand movements. We employed an adaptive neuro–fuzzy inference system (ANFIS) to identify hand motion commands. Training the fuzzy system was performed by a hybrid back propagation and least-mean-square algorithm, and for optimizing the number of fuzzy rules, a subtractive-clustering algorithm was utilized. Furthermore, this paper employed time and time–frequency domains and their combination as the features of the sEMG signal. The proposed recognition scheme utilizing the combined features with an ANFIS classification provided the best result in identifying complex hand movements. The maximum identification accuracy rate of 100% and an average classification accuracy of the proposed ANFIS system of 92% proved to be superior in comparison with relevant studies to date.
机译:表面肌电图(sEMG)信号是一种非侵入性的生物电信号,可以用于人工肢体的康复和控制。当前的sEMG模式识别系统受模式数量有限的困扰,这些模式经常由于仪器和分析系统的不正确准确性而加剧。为了解决这些问题,我们设计了一个基于多步骤的sEMG模式识别系统,该系统在每一步中都采用了功能更强大,性能更强的相关技术。在本文中,我们利用sEMG信号对六种类型的手部运动进行分类和识别。我们采用了自适应神经模糊推理系统(ANFIS)来识别手部动作命令。通过混合反向传播和最小均方算法对模糊系统进行训练,为优化模糊规则的数量,采用减法聚类算法。此外,本文采用时域和时频域及其组合作为sEMG信号的特征。所提出的利用结合特征与ANFIS分类的识别方案在识别复杂的手部动作方面提供了最佳结果。与迄今为止的相关研究相比,所提出的ANFIS系统的最大识别准确率达100%,平均分类准确度达92%。

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