Enhancing EEG Signal Generation through a Hybrid Approach Integrating Reinforcement Learning and Diffusion Models
Yang An, Yuhao Tong, Weikai Wang, Steven W. Su

TL;DR
This paper presents a novel hybrid method combining reinforcement learning and diffusion models to generate realistic synthetic EEG signals, addressing data scarcity, privacy, and cost issues in EEG research and BCI applications.
Contribution
It introduces a new generative framework that models both temporal and spectral EEG features using reinforcement learning to optimize the diffusion process.
Findings
Generated EEG data preserves participant privacy.
Improves training efficiency with less annotated data.
Enhances diversity and realism of synthetic EEG signals.
Abstract
The present study introduces an innovative approach to the synthesis of Electroencephalogram (EEG) signals by integrating diffusion models with reinforcement learning. This integration addresses key challenges associated with traditional EEG data acquisition, including participant burden, privacy concerns, and the financial costs of obtaining high-fidelity clinical data. Our methodology enhances the generation of EEG signals with detailed temporal and spectral features, enriching the authenticity and diversity of synthetic datasets. The uniqueness of our approach lies in its capacity to concurrently model time-domain characteristics, such as waveform morphology, and frequency-domain features, including rhythmic brainwave patterns, within a cohesive generative framework. This is executed through the reinforcement learning model's autonomous selection of parameter update strategies, which…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces
MethodsDiffusion
