IEEE Transactions on Neural Systems and Rehabilitation Engineering (Jan 2024)

A Cascade xDAWN EEGNet Structure for Unified Visual-Evoked Related Potential Detection

  • Hongtao Wang,
  • Zehui Wang,
  • Yu Sun,
  • Zhen Yuan,
  • Tao Xu,
  • Junhua Li

DOI
https://doi.org/10.1109/TNSRE.2024.3415474
Journal volume & issue
Vol. 32
pp. 2270 – 2280

Abstract

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Visual-based brain-computer interface (BCI) enables people to communicate with others by spelling words from the brain and helps professionals recognize targets in large numbers of images. P300 signals evoked by different types of stimuli, such as words or images, may vary significantly in terms of both amplitude and latency. A unified approach is required to detect variable P300 signals, which facilitates BCI applications, as well as deepens the understanding of the P300 generation mechanism. In this study, our proposed approach involves a cascade network structure that combines xDAWN and classical EEGNet techniques. This network is designed to classify target and non-target stimuli in both P300 speller and rapid serial visual presentation (RSVP) paradigms. The proposed approach is capable of recognizing more symbols with fewer repetitions (up to 5 rounds) compared to other models while possessing a better information transfer rate (ITR) as demonstrated on Dataset II (17.22 bits/min in the second repetition round) of BCI Competition III. Additionally, our approach has the highest unweighted average recall (UAR) performance for both 5 Hz ( $0.8134\pm 0.0259$ ) and 20 Hz ( $0.6527\pm 0.0321$ ) RSVP. The results show that the cascade network structure has better performance between both the P300 Speller and RSVP paradigms, manifesting that such a cascade structure is robust enough for dealing with P300-related signals (source code is available at https://github.com/embneural/Cascade-xDAWN-EEGNet-for-ERP-Detection).

Keywords