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Brain Computer Interface Classifiers for Semi-Autonomous Wheelchair Using Fuzzy Logic Optimization

机译:大脑计算机接口分类器半自治的轮椅使用模糊逻辑优化

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摘要

A brain-computer interface (BCI)-based controller bridges the gap between smart wheelchairs and physically impaired persons with severe conditions. This paper presents the design of a hybrid BCI controller with six classifiers using an electroencephalogram (EEG) headset to detect hand motor imagery (MI) and jaw electromyography (EMG) signals. A BCI controller and semi-autonomous system is developed to control a smart wheelchair in conjunction with its semi-autonomous capabilities. For data acquisition, an openvibe system and a commercial grade EEG headset are used. A multiple common spatial pattern (CSP) filter and Linear discriminant analysis (LDA) classifier system is used to process and classify the user's brain activity. To convert the classifier data into a signal that is compatible with the semi-autonomous wheelchair system, a fuzzy logic controller (FLC) is integrated in LabVIEW. Subjects are trained to use the BCI system and the classifier profiles are optimized for each user and the results are analyzed for this study. The openvibe "Replay" script and recorded training data are used to evaluate the performance of the controller scheme. For each subject, positive, negative, and false-positive executions are recorded. During the initial testing phase, the positive rates for subjects were strong, but false-positive rates were too high to be used. Therefore, the design is iterated by changing the rules of the FLC and configuration of the LabVIEW script. The configuration with the best positive rates for turn executions is chosen where the average positive rate for turning is 0.68 for subject 1 and 0.64 for subject 2.
机译:脑-机接口(BCI)的控制器桥梁智能轮椅和之间的差距身体严重受损条件。混合BCI控制器有六个分类器使用脑电图(EEG)耳机来检测手运动图像(MI)和下颌肌电图(EMG)信号。半自治的系统开发控制智能轮椅的结合半自治的能力。收购,openvibe系统和商业年级脑电图使用耳机。空间格局(CSP)滤波器和线性判别分析(LDA)分类器系统用于处理和分类用户的大脑活动。是兼容的信号半自治的轮椅系统,模糊逻辑控制器(方法)是虚拟仪器集成。使用BCI系统和科目训练分类器配置文件进行了优化用户和本研究的结果进行了分析。openvibe“重播”脚本,并记录下来训练数据是用来评估控制器方案的性能。主题,积极的,消极的,假阳性执行记录。测试阶段,积极的利率为主题是强大的,但假阳性利率是吗要使用高。迭代的方法和通过改变规则虚拟仪器的配置脚本。配置最好的利率将执行选择的平均水平主题1积极率将是0.680.64, 2。

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