Transformer architectures are increasingly applied in EEG analysis for motor imagery, emotion recognition, and seizure detection, with data augmentation and transfer learning as potential solutions.
This review serves as a roadmap for researchers employing transformer architectures in EEG analysis for motor imagery, emotion recognition, and seizure detection.
Transformers have rapidly influenced research across various domains. With their superior capability to encode long sequences, they have demonstrated exceptional performance, outperforming existing machine learning methods. There has been a rapid increase in the development of transformer-based models for EEG analysis. The high volumes of recently published papers highlight the need for further studies exploring transformer architectures, key components, and models employed particularly in EEG studies. This paper aims to explore four major transformer architectures: Time Series Transformer, Vision Transformer, Graph Attention Transformer, and hybrid models, along with their variants in recent EEG analysis. We categorize transformer-based EEG studies according to the most frequent applications in motor imagery classification, emotion recognition, and seizure detection. This paper also highlights the challenges of applying transformers to EEG datasets and reviews data augmentation and transfer learning as potential solutions explored in recent years. Finally, we provide a summarized comparison of the most recent reported results. We hope this paper serves as a roadmap for researchers interested in employing transformer architectures in EEG analysis.
Vafaei et al. (Thu,) conducted a review in EEG analysis (motor imagery, seizure, emotion classification). Transformer architectures was evaluated. Transformer architectures are increasingly applied in EEG analysis for motor imagery, emotion recognition, and seizure detection, with data augmentation and transfer learning as potential solutions.
Synapse has enriched 5 closely related papers on similar clinical questions. Consider them for comparative context: