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A multiuser EEG based imaginary motion classification using neural networks

机译:一种使用神经网络的基于多用户EEG的虚拟运动分类

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摘要

Using Electroencephalography (EEG) to detect imaginary motions from brain waves to interface human and computer is a very nascent and challenging field that started developing rapidly in the past few decades. This technique is termed as Brain Computer Interface (BCI). BCI is extremely important in case of people who are incapable of communicating due to spinal cord injury. This technique uses the brain signals to make decisions, control and communicate with the world using brain integration with peripheral devices and systems. In this paper, in order to classify imaginary motions, raw data are used to train a system of neural networks with a majority vote output. EEG data for 3 subjects are used from the BCI Competition III dataset V. Each subject has data collected in three sessions representing three different types of imaginary motions. Using an optimized set of electrodes, classification accuracy was optimized for the three users as a group. A cross validation method is applied to improve the reliability of the generated results. The optimization resulted in an electrode structure consisting of 15 electrodes with a relatively high classification accuracy of almost 80%.
机译:使用脑电图(EEG)来检测从脑波到接口人类和计算机的虚数动作是一个非常漂亮的和具有挑战性的领域,在过去几十年中开始发展迅速。该技术被称为脑电脑界面(BCI)。如果是由于脊髓损伤无法沟通的人,BCI非常重要。这种技术使用大脑信号进行决策,控制和与世界与外围设备和系统集成的世界通信。在本文中,为了分类虚拟动作,原始数据用于培训具有多数投票输出的神经网络系统。来自BCI竞赛III DataSet V的3个受试者的EEG数据。每个主题有三个会议中收集的数据,代表三种不同类型的虚构动作。使用优化的电极组,为三个用户作为组进行了分类准确度。应用交叉验证方法来提高所生成的结果的可靠性。优化导致电极结构由15个电极组成,具有近80%的相对高的分类精度。

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