| Literature DB >> 33841094 |
Abstract
Brain computer interaction (BCI) based on EEG can help patients with limb dyskinesia to carry out daily life and rehabilitation training. However, due to the low signal-to-noise ratio and large individual differences, EEG feature extraction and classification have the problems of low accuracy and efficiency. To solve this problem, this paper proposes a recognition method of motor imagery EEG signal based on deep convolution network. This method firstly aims at the problem of low quality of EEG signal characteristic data, and uses short-time Fourier transform (STFT) and continuous Morlet wavelet transform (CMWT) to preprocess the collected experimental data sets based on time series characteristics. So as to obtain EEG signals that are distinct and have time-frequency characteristics. And based on the improved CNN network model to efficiently recognize EEG signals, to achieve high-quality EEG feature extraction and classification. Further improve the quality of EEG signal feature acquisition, and ensure the high accuracy and precision of EEG signal recognition. Finally, the proposed method is validated based on the BCI competiton dataset and laboratory measured data. Experimental results show that the accuracy of this method for EEG signal recognition is 0.9324, the precision is 0.9653, and the AUC is 0.9464. It shows good practicality and applicability.Entities:
Keywords: BCI classifier; CSP algorithm; EEG signal; continuous morlet wavelet transform; deep convolutional neural network; motor imagination; short time fourier transform
Year: 2021 PMID: 33841094 PMCID: PMC8027090 DOI: 10.3389/fnins.2021.655599
Source DB: PubMed Journal: Front Neurosci ISSN: 1662-453X Impact factor: 4.677
FIGURE 1Structure of motor imagery recognition system.
FIGURE 2MI experimental paradigm.
FIGURE 3Flow chart of BCI classifier design and training.
FIGURE 4Improved CNN network structure.
FIGURE 5Influence of convolution check on identification results.
FIGURE 6The curve of training error with iteration times.
FIGURE 7The curve of recognition accuracy with the number of iterations.
FIGURE 8Classification results analysis based on temporal sequence.
Evaluation index of control models.
| The proposed method | 0.9324 | 0.9653 | 0.8682 | 0.9243 | 0.9464 |
| 0.9135 | 0.9211 | 0.8732 | 0.8932 | 0.9132 | |
| 0.8932 | 0.8976 | 0.8321 | 0.8589 | 0.8843 | |
| 0.8821 | 0.8832 | 0.7932 | 0.7932 | 0.8591 |