An optimized deep learning approach based on autoencoder network for P300 detection in brain computer interface systems

Ramin Afrah, Z. Amini, R. Kafieh, Alireza Vard
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Abstract

Background. Brain computer interface (BCI) systems by extracting knowledge from brain signals provide a connection channel to the outside world for disabled people, without physiological interfaces. Event-related potentials (ERPs) are a specific type of electroencephalography signals and P300 is one of the most important ERP components. The critical part of P300-based BCI systems is classification step. In this research, an approach is proposed for P300 classification based on novel machine learning methods using convolutional neural networks (CNN) and autoencoder networks. Methods. In the pre-processing step, channel selection, data augmentation (by ADASYN method), filtering and base-line drift were done. Then, in the classification step, four different CNN classifiers including CNN1D, CNN2D, CNN1D_Autoencoder, and CNN2D-Autoencoder were used for P300 classification. Results. After implementation and tuning the networks, 92% as a best accuracy was achieved by CNN2D_Autoencoder. This result was achieved with a considerable tradeoff between complexity and stability. Conclusion. The acquired results emphasize the ability of the deep learning methods in P300 classification and approve the advantage of using them in BCI systems. Furthermore, autoencoder versions of CNN networks are more stable and have a faster convergence. Meanwhile, ADASYN is a suitable method for augmentation of P300 data and even ERPs by sustaining the premier feature space without copying data. Practical Implications. Our results can increase the accuracy of P300 detection and simultaneously reduce the volume of data using the proposed model. Consequently, they can improve character recognition in P300-speller systems generally used by amyotrophic lateral sclerosis (ALS) patients.
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基于自编码器网络的深度学习优化方法在脑机接口系统中的P300检测
背景。脑机接口(BCI)系统通过从脑信号中提取知识,为残疾人提供了一个与外界连接的通道,无需生理接口。事件相关电位是一种特殊类型的脑电图信号,P300是ERP最重要的组成部分之一。基于p300的脑机接口系统的关键部分是分类步骤。在本研究中,提出了一种基于卷积神经网络(CNN)和自编码器网络的新型机器学习方法的P300分类方法。方法。在预处理步骤中,进行了信道选择、数据增强(通过ADASYN方法)、滤波和基线漂移。然后,在分类步骤中,使用CNN1D、CNN2D、CNN1D_Autoencoder和CNN2D- autoencoder四种不同的CNN分类器对P300进行分类。结果。经过网络的实现和调整,CNN2D_Autoencoder达到了92%的最佳准确率。这个结果是在复杂性和稳定性之间进行了相当大的权衡后获得的。结论。所得结果强调了深度学习方法在P300分类中的能力,并认可了在BCI系统中使用它们的优势。此外,自编码器版本的CNN网络更稳定,收敛速度更快。同时,ADASYN是一种适用于P300数据甚至erp的方法,它在不复制数据的情况下维持首要特征空间。实际意义。我们的研究结果可以提高P300检测的准确性,同时减少使用该模型的数据量。因此,它们可以改善肌萎缩性侧索硬化症(ALS)患者通常使用的p300拼写系统的字符识别。
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