# EED-CL: Extended EEG Deformer with Contrastive Learning for Robust Emotion Recognition

**Authors:** Hyoung-Gook Kim, Jin-Young Kim

PMC · DOI: 10.3390/bioengineering13010029 · Bioengineering · 2025-12-26

## TL;DR

This paper introduces EED-CL, a new framework that improves emotion recognition from EEG signals by combining advanced neural network components and contrastive learning.

## Contribution

The novel EED-CL framework integrates a hierarchical transformer and contrastive learning for robust emotion recognition from EEG data.

## Key findings

- EED-CL outperforms conventional models on benchmark EEG datasets.
- The framework shows strong robustness to intersubject variability and noise.
- EED-CL achieves better performance with limited labeled data.

## Abstract

Emotion recognition based on EEG signals remains a challenging task due to the complex spatiotemporal properties of brain activity and substantial intersubject variability. To address these challenges, we propose the EED-CL framework, which integrates an extended EEG-Deformer (EED) with contrastive learning (CL). The proposed model incorporates a depthwise separable convolution encoder for efficient extraction of spatiotemporal EEG features, a hierarchical coarse-to-medium-to-fine (HCMFT) transformer to capture multiscale temporal patterns, and an attentive dense information purification (ADIP) module to suppress noise and refine essential latent representations. In addition, CL-based pretraining facilitates robust feature learning even in settings with limited labeled data. The extracted multiscale features are integrated and classified through a Transformer encoder and an MLP. Experiments conducted on multiple benchmark EEG datasets show that EED consistently outperforms conventional models, while EED-CL achieves further improvements under label-constrained conditions. Notably, EED-CL demonstrates strong robustness to intersubject variability and noise, enabling stable emotion classification even when labeled samples are scarce. These findings indicate that EED-CL effectively captures multiscale spatiotemporal EEG patterns and offers a scalable and reliable approach for EEG-based emotion recognition.

## Full-text entities

- **Diseases:** EED-CL (MESH:D007859)

## Full text

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## Figures

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## References

46 references — full list in the complete paper: https://tomesphere.com/paper/PMC12837203/full.md

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Source: https://tomesphere.com/paper/PMC12837203