Abstract

Aiming at enhancing the classification accuracy of P300 Electroencephalogram signals in a non-invasive brain–computer interface system, a novel P300 electroencephalogram signals classification algorithm is proposed which is based on improved convolutional neural network. In the data preprocessing part, the proposed P300 classification algorithm used the Principal Component Analysis algorithm to not only remove the noise and artifacts in the data, but also increase the data processing speed. Furthermore, the proposed P300 classification algorithm employed the parallel convolution method to improve the traditional convolutional neural network framework, which can increase the network depth and improve the network’s ability to classify P300 electroencephalogram signals. The proposed algorithm was evaluated by two datasets (the dataset from the competition and the dataset from the laboratory). The results show that, in the dataset I, the proposed P300 classification algorithm could obtain accuracy rates higher than 95%, and achieve one of the best performances in four classification algorithms, while, in the dataset II, the proposed P300 classification algorithm can get accuracy rates higher than 90%, and is superior to the other three algorithms in all ten subjects. These demonstrated the effectiveness of the proposed algorithm. The proposed classification algorithm can be applied in the actual brain–computer interface systems to help people with disability in the daily lives.

Highlights

  • Brain–computer interfaces (BCI) can provide a direct communication method between the brain and a computer or other external devices [1,2,3]

  • The results indicated that the proposed algorithm had a significant effect on the recognition accuracy of P300 EEG signals

  • The convolutional neural network can directly extract features by itself, we find that the classification accuracy rates are higher after using PCA

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Summary

Introduction

Brain–computer interfaces (BCI) can provide a direct communication method between the brain and a computer or other external devices [1,2,3]. P300-based BCI is one of the most common BCI systems, as the P300 potential is easy to be stimulated. BCI system has some advantages: (1) P300 signal is extremely easy to measure and non-invasive;. (2) less training time; (3) suitable for most subjects, including those with severe neurological diseases; and (4) users only need to provide a simple control signal [7]. It can implement a variety of different functions, and can even be used in the home of people with disability [7,8].

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