Extraction of features of kinesthetic activities in the upper limb from EEG recordings based on sub-band analysis with wavelet transform for the control of robotic assistance systems

Jesus Garcia-Blancas, O. Dominguez-Ramirez, E. Rodríguez-Torres, L. Ramos-Velasco, Jose F. Martinez-Lendech
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Abstract

In the literature, findings of movement and force control of non-intrusive robotic assistance systems have been reported, based on the processing of electroencephalogram (EEG) recordings and the conditioning of the control strategy. However, the collection of signals in the cerebral cortex may not represent the set point defined in the cerebellum, particularly in post-cerebral stroke patients. The present study reports a new proposal inspired by human intention of a gross motor action assisted by a robotic platform. For this, a BCI (Brain-Computer Interface) system is used, based on the instrumentation of EEG signals, specifically from the cerebral cortex, and its digital processing using wavelet multiresolution analysis for the detection of features associated with real and imagined kinesthetic tasks, such as: upper limb movement and manipulation of objects. The main result is associated with the position control of a direct current motor and the motion control of a 2 DOF manipulator robot, with a high performance adaptive wavenet PID control for stabilization of non-linear MIMO (Multiple Inputs Multiple Outputs) systems.
基于小波变换子带分析的上肢动觉活动特征提取在机器人辅助系统控制中的应用
在文献中,基于脑电图(EEG)记录的处理和控制策略的调节,已经报道了非侵入式机器人辅助系统的运动和力控制的发现。然而,大脑皮层的信号收集可能不代表小脑中定义的设定点,特别是在脑卒中后患者中。目前的研究报告了一个新的提议,灵感来自于人类的意图,一个由机器人平台辅助的大运动动作。为此,我们使用了脑机接口(BCI)系统,该系统基于脑电图信号的仪器,特别是来自大脑皮层的信号,并使用小波多分辨率分析对其进行数字处理,以检测与真实和想象的动觉任务相关的特征,例如:上肢运动和对物体的操纵。主要研究结果与直流电机的位置控制和2自由度机械手机器人的运动控制有关,并采用高性能自适应波形PID控制来稳定非线性多输入多输出(MIMO)系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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