Abstract

The brain–computer interface-based rehabilitation robot has quickly become a very important research area due to its natural interaction. One of the most important problems in brain–computer interface is that large-scale annotated electroencephalography data sets required by advanced classifiers are almost impossible to acquire because biological data acquisition is challenging and quality annotation is costly. Transfer learning relaxes the hypothesis that the training data must be independent and identically distributed with the test data. It can be considered a powerful tool for solving the problem of insufficient training data. There are two basic issues with transfer learning, under transfer and negative transfer. We proposed a novel brain–computer interface framework by using autoencoder-based transfer learning, which includes three main components: an autoencoder framework, a joint adversarial network, and a regularized manifold constraint. The autoencoder framework automatically encodes and reconstructs data from source and target domains and forces the neural network to learn to represent these domains reliably. The joint adversarial network aims to force the network to learn to encode more appropriately for the source domain and target domain simultaneously, thereby overcoming the problem of under transfer. The regularized manifold constraint aims to avoid the problem of negative transfer by avoiding geometric manifold structure in the target domain being destroyed by the source domain. Experiments show that the brain–computer interface framework proposed by us can achieve better results than state-of-the-art approaches in electroencephalography signal classification tasks. This is helpful in aiding our rehabilitation robot to understand the intention of patients and can help patients to carry out rehabilitation exercises effectively.

Highlights

  • One of the main reasons for patients with physical disabilities is that their neural pathways are impeded, and medical knowledge suggests that the patient’s neural pathways can be reactivated by repeat movements

  • We proposed an autoencoder-based transfer learning (ATL) framework that learns representations that are appropriate for both domains and effectively transfer this representation as knowledge to the target domain

  • Based on the ATL framework we proposed, we can apply it to EEG signal classification tasks

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Summary

Introduction

One of the main reasons for patients with physical disabilities is that their neural pathways are impeded, and medical knowledge suggests that the patient’s neural pathways can be reactivated by repeat movements. We can apply our ATL framework for knowledge transfer and use the large-scale, well-labeled target data set in the natural image to improve the accuracy of EEG signal classification tasks. The contributions of our approach are as follows: We proposed an ATL framework to transfer knowledge from source domain to target domain in an effective way. Within this framework, we utilized a joint adversarial training approach based on an adversarial network to overcome the problem of under transfer and use the regularized manifold constraint to overcome the negative-transfer problem. Our experimental results are presented in the fifth section, and the conclusions and further plans are discussed in the last section

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