EEG based Directional Signal Classification using RNN Variants

Bikram Adhikari, Ankit Shrestha, Shailesh Mishra, Suyog Singh, Arun K. Timalsina
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引用次数: 5

Abstract

EEG(Electroencephalogram) signals generated within the brain can be extracted using sensors. Thus generated signals can be classified based on the feature that are embedded within it. The signals once recognized can act as alternative inputs for users suffering from severe motor impairment. The inputs can be used for motion signal i.e directions left, right, up and down. In this paper, the raw EEG signals and power signals generated from NeuroSky Mindwave device have been classified using deep neural networks. Bi-directional Long Short Term Network architecture(Bi-LSTM) and a model which uses Long Short Term Memory(LSTM) with Attention layer have been implemented for the purpose. An accuracy of 56% was obtained using bi-directional LSTM network with raw signals, 44.75% accuracy with power signals, and with attention network using raw signals an accuracy of 63% was obtained.
基于脑电的RNN变量定向信号分类
利用传感器可以提取大脑内产生的脑电图信号。因此,可以根据嵌入其中的特征对生成的信号进行分类。这些信号一旦被识别,就可以作为患有严重运动障碍的用户的替代输入。输入可用于运动信号,即方向左,右,上,下。本文采用深度神经网络对神经天空脑电波装置产生的原始脑电信号和功率信号进行分类。为此,实现了双向长短期网络体系结构(Bi-LSTM)和具有注意层的长短期记忆(LSTM)模型。使用原始信号的双向LSTM网络的准确率为56%,使用功率信号的准确率为44.75%,使用原始信号的注意力网络的准确率为63%。
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