MEGState: Phoneme Decoding from Magnetoencephalography Signals
Abstract
Decoding linguistically meaningful representations from non-invasive neural recordings remains a central challenge in neural speech decoding. Among available neuroimaging modalities, magnetoencephalography (MEG) provides a safe and repeatable means of mapping speech-related cortical dynamics, yet its low signal-to-noise ratio and high temporal dimensionality continue to hinder robust decoding. In this work, we introduce MEGState, a novel architecture for phoneme decoding from MEG signals that captures fine-grained cortical responses evoked by auditory stimuli. Extensive experiments on the LibriBrain dataset demonstrate that MEGState consistently surpasses baseline model across multiple evaluation metrics. These findings highlight the potential of MEG-based phoneme decoding as a scalable pathway toward non-invasive brain-computer interfaces for speech.
Keywords
Cite
@article{arxiv.2512.17978,
title = {MEGState: Phoneme Decoding from Magnetoencephalography Signals},
author = {Shuntaro Suzuki and Chia-Chun Dan Hsu and Yu Tsao and Komei Sugiura},
journal= {arXiv preprint arXiv:2512.17978},
year = {2025}
}
Comments
Accepted for presentation at LibriBrain Competition, NeurIPS 2025