CVFeb 2, 2025

Spatio-Temporal Progressive Attention Model for EEG Classification in Rapid Serial Visual Presentation Task

arXiv:2502.00730v1h-index: 16IEEE Trans Biomed Eng
Originality Incremental advance
AI Analysis

This work addresses EEG classification for brain-computer interfaces, but it is incremental as it builds on existing attention-based methods with a novel dataset.

The authors tackled EEG classification in rapid serial visual presentation tasks by proposing a spatial-temporal progressive attention model (STPAM) and a new infrared EEG dataset (IRED), achieving better performance than compared methods.

As a type of multi-dimensional sequential data, the spatial and temporal dependencies of electroencephalogram (EEG) signals should be further investigated. Thus, in this paper, we propose a novel spatial-temporal progressive attention model (STPAM) to improve EEG classification in rapid serial visual presentation (RSVP) tasks. STPAM first adopts three distinct spatial experts to learn the spatial topological information of brain regions progressively, which is used to minimize the interference of irrelevant brain regions. Concretely, the former expert filters out EEG electrodes in the relative brain regions to be used as prior knowledge for the next expert, ensuring that the subsequent experts gradually focus their attention on information from significant EEG electrodes. This process strengthens the effect of the important brain regions. Then, based on the above-obtained feature sequence with spatial information, three temporal experts are adopted to capture the temporal dependence by progressively assigning attention to the crucial EEG slices. Except for the above EEG classification method, in this paper, we build a novel Infrared RSVP EEG Dataset (IRED) which is based on dim infrared images with small targets for the first time, and conduct extensive experiments on it. The results show that our STPAM can achieve better performance than all the compared methods.

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