Author/Authors :
Zhang, Kai School of Mechanical Engineering - Xi’an Jiaotong University - Xi’an, China , Xu, Guanghua School of Mechanical Engineering - Xi’an Jiaotong University - Xi’an, China , Chen, Longtin School of Mechanical Engineering - Xi’an Jiaotong University - Xi’an, China , Tian, Peiyuan School of Mechanical Engineering - Xi’an Jiaotong University - Xi’an, China , Han, ChengCheng School of Mechanical Engineering - Xi’an Jiaotong University - Xi’an, China , Zhang, Sicong School of Mechanical Engineering - Xi’an Jiaotong University - Xi’an, China , Duan, Nan School of Mechanical Engineering - Xi’an Jiaotong University - Xi’an, China
Abstract :
In the process of brain-computer interface (BCI), variations across sessions/subjects result in differences in the properties of
potential of the brain. This issue may lead to variations in feature distribution of electroencephalogram (EEG) across subjects,
which greatly reduces the generalization ability of a classifier. Although subject-dependent (SD) strategy provides a promising
way to solve the problem of personalized classification, it cannot achieve expected performance due to the limitation of the
amount of data especially for a deep neural network (DNN) classification model. Herein, we propose an instance transfer
subject-independent (ITSD) framework combined with a convolutional neural network (CNN) to improve the classification
accuracy of the model during motor imagery (MI) task. The proposed framework consists of the following steps. Firstly, an
instance transfer learning based on the perceptive Hash algorithm is proposed to measure similarity of spectrogram EEG signals
between different subjects. Then, we develop a CNN to decode these signals after instance transfer learning. Next, the
performance of classifications by different training strategies (subject-independent- (SI-) CNN, SD-CNN, and ITSD-CNN) are
compared. To verify the effectiveness of the algorithm, we evaluate it on the dataset of BCI competition IV-2b. Experiments
show that the instance transfer learning can achieve positive instance transfer using a CNN classification model. Among the
three different training strategies, the average classification accuracy of ITSD-CNN can achieve 94:7±2:6 and obtain obvious
improvement compared with a contrast model ðp < 0:01Þ. Compared with other methods proposed in previous research, the
framework of ITSD-CNN outperforms the state-of-the-art classification methods with a mean kappa value of 0.664.