基于运动图像脑电的NAO机器人肢体控制方法

Yuan Guo, Mei Wang, Tianwei Zheng, Yuancheng Li, Pai Wang, Xuebin Qin
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摘要

脑机接口(BCI)技术是指在人脑和计算机之间建立直接通信和控制通道的技术。该技术无需穿过患者受损的神经和衰退的肌肉系统,即可满足外部设备的控制要求。脑电图(EEG)包含多种信息,包括运动想象信息、稳态视诱发脑电图信息、情绪信息、疲劳信息等。本文设计了一种基于运动想象的脑机接口系统,并将其用于控制NAO机器人的身体运动。该系统主要分为三个模块:信号采集、信号处理和机器人控制。在信号采集方面,使用了电极帽、导电胶、脑电图放大器和Curry7软件。本文设计了一种基于改进子带滤波器组(FB)-公共空间模式(CSP)的频带特征选择算法。使用Bagging集成分类算法对这些特征进行分类,并转换为使用命令来控制NAO机器人。在通信控制方面,预置指令码,分类结果对应控制机器人不同动作的指令。它通过无线通信技术传输给机器人。本文提出的Bagging集成分类方法对脑电特征进行分类。四类运动成像脑电分类准确率高达78.29%,NAO机器人动作执行实验准确率高达86.33%,证明了本文所研究算法的正确性。本文所设计的NAO机器人脑控系统的可靠性和可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NAO Robot Limb Control Method Based on Motor Imagery EEG
Brain computer interface (BCI) technology refers to the technology that helps establish direct communication and control channels between the human brain and the computer. This technology can meet the control requirements of external equipment without passing through the patient's damaged nerves and declining muscle system. Electroencephalogram (EEG) contains a variety of information, including motor imagination information, steady-state visually evoked EEG information, emotional information, and fatigue information, etc. This paper designs a brain-computer interface system based on motor imagination and uses it to control the body movements of the NAO robot. The system is mainly divided into three modules: signal acquisition, signal processing and robot control. In terms of signal acquisition, electrode caps, conductive glue, EEG amplifiers and Curry7 software are used. In this paper, we design a frequency band feature selection algorithm based on an improved sub-band filter bank (FB)-Common Space Pattern (CSP). These features are classified using Bagging ensemble classification algorithm and converted to use Commands for controlling the NAO robot. In terms of communication control, the instruction codes are preset, and the classification results are corresponding to instructions for controlling different actions of the robot. It is transmitted to the robot by using wireless communication technology. The Bagging ensemble classification method proposed in this paper classifies EEG features. The accuracy of the four types of motor imaging EEG classification is as high as 78.29%, and the accuracy of NAO robot action execution experiments is up to 86.33%, which proves the correctness of the algorithm studied in this paper. The reliability and feasibility of the NAO robot brain control system designed in this paper.
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