解码方法
计算机科学
语音识别
主题(文档)
时频分析
人工智能
算法
电信
万维网
雷达
作者
Mingyang Fan,Zhenhua Sang,Jian Wu,Yuzhu Guo
标识
DOI:10.1016/j.bspc.2025.108141
摘要
Steady-State Visual Evoked Potential (SSVEP) based Brain–Computer Interface (BCI) has been widely used. While unsupervised methods like Filter Bank Canonical Correlation Analysis (FBCCA) perform well in long time windows, it performances significantly declines in short time windows. Supervised methods such as Task Related Component Analysis (TRCA), on the other hand, perform well in short time windows but exhibit weak under cross-subject generalization. To address these issues, this paper introduces the self-attention mechanism from the Transformer into the SSVEP decoding task to enhance the model’s cross-subject adaptability. To learn individualized SSVEP features, this method fully leverages the spatiotemporal, frequency, and phase information in EEG, using segment embedding and position embedding to differentiate these features. Additionally, a token as additional channel information is incorporated to gather other channels’ information for classification. The proposed approach achieved promising results on two commonly used public SSVEP datasets, demonstrating better performance in short time windows and cross-subject conditions compared to traditional unsupervised and supervised models, as well as supervised deep learning models.
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