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Open Software/Hardware Platform for Human-Computer Interface Based on Electrooculography (EOG) Signal Classification

机译:基于眼电图(EOG)信号分类的开放式人机界面软件/硬件平台

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摘要

Electrooculography (EOG) signals have been widely used in Human-Computer Interfaces (HCI). The HCI systems proposed in the literature make use of self-designed or closed environments, which restrict the number of potential users and applications. Here, we present a system for classifying four directions of eye movements employing EOG signals. The system is based on open source ecosystems, the Raspberry Pi single-board computer, the OpenBCI biosignal acquisition device, and an open-source python library. The designed system provides a cheap, compact, and easy to carry system that can be replicated or modified. We used Maximum, Minimum, and Median trial values as features to create a Support Vector Machine (SVM) classifier. A mean of 90% accuracy was obtained from 7 out of 10 subjects for online classification of Up, Down, Left, and Right movements. This classification system can be used as an input for an HCI, i.e., for assisted communication in paralyzed people.
机译:眼电图(EOG)信号已广泛用于人机界面(HCI)。文献中提出的HCI系统利用了自行设计或封闭的环境,这限制了潜在用户和应用程序的数量。在这里,我们介绍了一种使用EOG信号对眼睛运动的四个方向进行分类的系统。该系统基于开源生态系统,Raspberry Pi单板计算机,OpenBCI生物信号采集设备以及开源python库。设计的系统提供了一种便宜,紧凑且易于携带的系统,可以对其进行复制或修改。我们使用“最大”,“最小”和“中间值”试验值作为功能来创建支持向量机(SVM)分类器。从上,下,左,右运动的在线分类中,每10个对象中有7个获得了90%的准确度平均值。该分类系统可用作HCI的输入,即用于瘫痪者的辅助交流。

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