Short-length SSVEP data extension by a novel generative adversarial
networks based framework
- URL: http://arxiv.org/abs/2301.05599v5
- Date: Mon, 2 Oct 2023 09:26:37 GMT
- Title: Short-length SSVEP data extension by a novel generative adversarial
networks based framework
- Authors: Yudong Pan, Ning Li, Yangsong Zhang, Peng Xu and Dezhong Yao
- Abstract summary: generative adversarial networks (GANs)-based data generation methods have been widely adopted to create synthetic electroencephalography (EEG) data.
In this paper, we proposed a GAN-based end-to-end signal transformation network for Time-window length Extension, termed as TEGAN.
- Score: 8.73426706739974
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Steady-state visual evoked potentials (SSVEPs) based brain-computer interface
(BCI) has received considerable attention due to its high information transfer
rate (ITR) and available quantity of targets. However, the performance of
frequency identification methods heavily hinges on the amount of user
calibration data and data length, which hinders the deployment in real-world
applications. Recently, generative adversarial networks (GANs)-based data
generation methods have been widely adopted to create synthetic
electroencephalography (EEG) data, holds promise to address these issues. In
this paper, we proposed a GAN-based end-to-end signal transformation network
for Time-window length Extension, termed as TEGAN. TEGAN transforms
short-length SSVEP signals into long-length artificial SSVEP signals. By
incorporating a novel U-Net generator architecture and an auxiliary classifier
into the network architecture, the TEGAN could produce conditioned features in
the synthetic data. Additionally, we introduced a two-stage training strategy
and the LeCam-divergence regularization term to regularize the training process
of GAN during the network implementation. The proposed TEGAN was evaluated on
two public SSVEP datasets (a 4-class dataset and a 12-class dataset). With the
assistance of TEGAN, the performance of traditional frequency recognition
methods and deep learning-based methods have been significantly improved under
limited calibration data. And the classification performance gap of various
frequency recognition methods has been narrowed. This study substantiates the
feasibility of the proposed method to extend the data length for short-time
SSVEP signals for developing a high-performance BCI system. The proposed
GAN-based methods have the great potential of shortening the calibration time
and cutting down the budget for various real-world BCI-based applications.
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