Abstract

Decoding motor imagery (MI) electroencephalogram (EEG) signals for brain-computer interfaces (BCIs) is a challenging task because of the severe non-stationarity of perceptual decision processes. Recently, deep learning techniques have had great success in EEG decoding because of their prominent ability to learn features from raw EEG signals automatically. However, the challenge that the deep learning method faces is that the shortage of labeled EEG signals and EEGs sampled from other subjects cannot be used directly to train a convolutional neural network (ConvNet) for a target subject. To solve this problem, in this paper, we present a novel conditional domain adaptation neural network (CDAN) framework for MI EEG signal decoding. Specifically, in the CDAN, a densely connected ConvNet is firstly applied to obtain high-level discriminative features from raw EEG time series. Then, a novel conditional domain discriminator is introduced to work as an adversarial with the label classifier to learn commonly shared intra-subjects EEG features. As a result, the CDAN model trained with sufficient EEG signals from other subjects can be used to classify the signals from the target subject efficiently. Competitive experimental results on a public EEG dataset (High Gamma Dataset) against the state-of-the-art methods demonstrate the efficacy of the proposed framework in recognizing MI EEG signals, indicating its effectiveness in automatic perceptual decision decoding.

Highlights

  • Electroencephalogram (EEG) signal decoding is an important part in a brain–computer interface (BCI) system, which establishes a direct communication pathway between the human brain and external devices by translating neuronal activities into a series of output commands to accomplish the user’s intentions [1]

  • We further extend a variation of conditional generative adversarial network (CGAN) to exploit the EEG features that are more transferable and discriminative and boost the EEGs decoding performance

  • The conditional adversarial domain adaptation method is proposed for learning discriminative subject independent features from raw EEG signals

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Summary

Introduction

Electroencephalogram (EEG) signal decoding is an important part in a brain–computer interface (BCI) system, which establishes a direct communication pathway between the human brain and external devices by translating neuronal activities into a series of output commands to accomplish the user’s intentions [1]. Discriminative features, such as entropy feature sets [6], the frequency band power [7], and the filter band common spatial pattern (FBCSP) [8,9] are extracted from each EEG trial. These informative features are fed into classifiers, including a Entropy 2020, 22, 96; doi:10.3390/e22010096 www.mdpi.com/journal/entropy

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