DETECTİON OF HAND MOVEMENTS BY ANALYZING EEG SIGNALS USING CNN

Aynur Jabiyeva, Mardaxay Ravinov Aynur Jabiyeva, Mardaxay Ravinov
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Abstract

In this paper a method for detecting six specific hand movement events in a 32-component brain EEG signal by using an ensemble of convolutional neural networks (CN) as a multiclass classifier is considered. The paper proposes and empirically evaluates several options for the architecture of convolutional neural networks, as well as an ensemble that combines the proposed options for the architecture of convolutional neural networks, using a blending algorithm and a final classifier based on logistic regression. The advantages of the chosen classification method for the problem being solved are shown. The results obtained make it possible to say that the use of a classifier in the form of an ensemble of several models of convolutional neural networks allows one to effectively identify characteristic features in the initial EEG signals, and at the output of the classifier to obtain the probabilities that the input signal belongs to one of the given classes of hand movements. The use of the blending algorithm makes it possible to obtain optimal classification results by integrating the best estimates of several models, which individually on the entire test set may give a non-optimal result.
通过使用CNN分析脑电图信号来分析手部运动的Detectİon
本文研究了一种利用卷积神经网络集成作为多类分类器来检测32分量脑电信号中6个特定手部运动事件的方法。本文使用混合算法和基于逻辑回归的最终分类器,提出并实证评估了卷积神经网络架构的几个选项,以及将卷积神经网络架构的建议选项组合在一起的集成。所选择的分类方法对所要解决的问题具有优越性。所获得的结果表明,以卷积神经网络的几个模型集成的形式使用分类器可以有效地识别初始EEG信号中的特征,并在分类器的输出中获得输入信号属于给定手部运动类别之一的概率。混合算法的使用使得通过整合多个模型的最佳估计来获得最优分类结果成为可能,这些模型单独在整个测试集上可能会给出非最优结果。
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