Brain Signal Classification Based on Deep CNN

T. Gao, Grace Y. Wang
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引用次数: 5

Abstract

It is essential to increase the accuracy and robustness of classification of brain data, including EEG, in order to facilitate a direct communication between the human brain and computerized devices. Different machine learning approaches, such as support vector machine (SVM), neural network, and linear discrimination analysis (LDA), have been applied to set up automatic subjective-classifier, and the findings for their capacities in this regard have been inconclusive. The present study developed an effective classifier for human mental status using deep learning in a convolutional neural network. In contrast to most previous studies commonly using EEG waveform or numeric value of brain signals for classification, the authors utilised imaging features generated from EEG data at alpha frequency band. A new model proposed in this study provides a simple and computationally efficient approach to distinguish mental status during resting. With training, this model could predict new 2D EEG images with above 90% accuracy, while traditional machine learning techniques failed to achieve this accuracy.
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基于深度CNN的脑信号分类
为了促进人类大脑和计算机设备之间的直接通信,提高包括脑电图在内的大脑数据分类的准确性和稳健性至关重要。不同的机器学习方法,如支持向量机(SVM)、神经网络和线性判别分析(LDA),已经被应用于建立自动主观分类器,并且在这方面的研究结果还没有定论。本研究在卷积神经网络中使用深度学习开发了一种有效的人类心理状态分类器。与以往大多数研究通常使用脑电图波形或脑信号的数值进行分类不同,作者利用了脑电图数据在α频段产生的成像特征。本研究提出的新模型提供了一种简单且计算效率高的方法来区分休息时的精神状态。经过训练,该模型可以预测新的二维脑电图图像,准确率达到90%以上,而传统的机器学习技术无法达到这一精度。
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