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P300 based character recognition using convolutional neural network and support vector machine

机译:使用卷积神经网络和支持向量机的基于P300的字符识别

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In this work, a brain-computer interface (BCI) system for character recognition has been proposed based on the P300 signal. P300 signal classification is the most challenging task in electroencephalography signal processing as it is affected by the surrounding noise and low signal-to-noise ratio (SNR). Feature extraction and feature selection are essential steps for any classification task. Most of the earlier techniques reported hand-crafted features for detection of P300 signal. However, the hand-crafted features are not efficient to represent the signal properly due to surrounding environment and subject variability. Motivated by this, convolutional neural network (CNN) has been proposed for automatic high-level feature extraction to detect P300 signal. In general, CNN model consists of convolutional and fully-connected layers followed by a softmax layer. In the developed system, two different convolutional layers are used to extract the spatial and temporal features from the dataset. Also, a 2D convolutional layer based CNN architecture has been proposed where spatio-temporal feature is extracted in a single layer. To mitigate the over-fitting problem, dropout is employed in CNN architecture, which improves the network performance. After extracting high-level features, Fisher ratio (F-ratio) based feature selection is proposed to find the optimal features. The optimal features are used in the ensemble of support vector machine (ESVM) classifier for P300 detection. ESVM has been adopted in this work to minimize the classifier variability. The models are tested on two widely used datasets, and the experimental results show better or comparable performance compared to the earlier reported techniques. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在这项工作中,已经提出了基于P300信号的用于字符识别的脑机接口(BCI)系统。 P300信号分类是脑电信号处理中最具挑战性的任务,因为它受到周围噪声和低信噪比(SNR)的影响。特征提取和特征选择对于任何分类任务都是必不可少的步骤。大多数较早的技术都报告了用于检测P300信号的手工功能。但是,由于周围环境和对象可变性,手工制作的功能无法有效地正确表示信号。为此,提出了卷积神经网络(CNN)用于自动高级特征提取以检测P300信号。通常,CNN模型由卷积层和完全连接层组成,然后是softmax层。在已开发的系统中,使用两个不同的卷积层从数据集中提取空间和时间特征。而且,已经提出了基于二维卷积层的CNN架构,其中在单个层中提取时空特征。为了缓解过度拟合的问题,在CNN架构中采用了dropout,从而提高了网络性能。提取高级特征后,提出了基于Fisher比率(F-ratio)的特征选择以找到最佳特征。最佳功能在支持向量机(ESVM)分类器中用于P300检测。在这项工作中采用了ESVM,以最大程度地减少分类器的可变性。该模型在两个广泛使用的数据集上进行了测试,与早期报道的技术相比,实验结果显示出更好或相当的性能。 (C)2019 Elsevier Ltd.保留所有权利。

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