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Design and Implementation of a Multi Sensor Based Brain Computer Interface for a Robotic Wheelchair

机译:用于机器人轮椅的多传感器基于大脑电脑界面的设计与实现

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In this study, design and implementation of a multi sensor based brain computer interface for disabled and/or elderly people is proposed. Developed system consists of a wheelchair, a high-power motor controller card, a Kinect camera, electromyogram (EMG) and electroencephalogram (EEG) sensors and a computer. The Kinect sensor is installed on the system to provide safe navigation for the system. Depth frames, captured by the Kinect's infra-red (IR) camera, are processed with a custom image processing algorithm in order to detect obstacles around the wheelchair. A Consumer grade EMG device (Thalmic Labs) was used to obtain eight channels of EMG data. Four different hand movements: Fist, release, waving hand left and right are used for EMG based control of the robotic wheelchair. EMG data is first classified using artificial neural network (ANN), support vector machines and random forest schemes. The class is then decided by a rule-based scheme constructed on the individual outputs of the three classifiers. EEG based control is adopted as an alternative controller for the developed robotic wheelchair. A wireless 14-channels EEG sensor (Emotiv Epoch) is used to acquire real time EEG data. Three different cognitive tasks: Relaxing, math problem solving, text reading are defined for the EEG based control of the system. Subjects were asked to accomplish the relative cognitive task in order to control the wheelchair. During experiments, all subjects were able to control the robotic wheelchair by hand movements and track a pre-determined route with a reasonable accuracy. The results for the EEG based control of the robotic wheelchair are promising though vary depending on user experience.
机译:在本研究中,提出了一种用于残疾和/或老年人的多传感器基础大脑电脑接口的设计和实现。开发系统由轮椅,高功率电机控制器卡,Kinect相机,电灰度(EMG)和脑电图(EEG)传感器和计算机组成。 Kinect传感器安装在系统上,为系统提供安全导航。由Kinect的红外线(IR)相机捕获的深度框架是用自定义图像处理算法处理的,以便检测轮椅周围的障碍物。消费级EMG设备(Thalmic Labs)用于获得八个媒体数据。四种不同的手动运动:左右拳,释放,挥手手用于基于EMG的机器人轮椅控制。 EMG数据首先使用人工神经网络(ANN)进行分类,支持向量机和随机森林方案。然后,该类由基于规则的方案决定,该规则的方案构建在三个分类器的各个输出上。基于EEG的控制被采用作为开发机器人轮椅的替代控制器。无线14通道EEG传感器(EMECIV EPOCH)用于获取实时EEG数据。三种不同的认知任务:放松,数学问题解决,文本读数是为系统的基于脑电站的控制。要求受试者完成相对认知任务以控制轮椅。在实验期间,所有受试者都能够通过手动运动控制机器人轮椅,并以合理的准确度跟踪预先确定的路线。基于EEG的机器人轮椅控制的结果是有希望的,这取决于用户体验。

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