EEG-to-Voice Decoding of Spoken and Imagined speech Using Non-Invasive EEG
Hanbeot Park, Yunjeong Cho, Hunhee Kim

TL;DR
This study presents a novel EEG-to-Voice framework that reconstructs speech directly from non-invasive EEG signals for both spoken and imagined speech, achieving stable acoustic and linguistic accuracy without temporal alignment.
Contribution
It introduces an open-loop EEG-to-Voice pipeline with subject-specific generators and transfer learning for imagined speech, advancing non-invasive neural speech decoding.
Findings
Stable acoustic reconstruction for spoken and imagined speech
Comparable linguistic accuracy across speech types
Language model correction reduces decoding errors
Abstract
Restoring speech communication from neural signals is a central goal of brain-computer interface research, yet EEG-based speech reconstruction remains challenging due to limited spatial resolution, susceptibility to noise, and the absence of temporally aligned acoustic targets in imagined speech. In this study, we propose an EEG-to-Voice paradigm that directly reconstructs speech from non-invasive EEG signals without dynamic time warping (DTW) or explicit temporal alignment. The proposed pipeline generates mel-spectrograms from EEG in an open-loop manner using a subject-specific generator, followed by pretrained vocoder and automatic speech recognition (ASR) modules to synthesize speech waveforms and decode text. Separate generators were trained for spoken speech and imagined speech, and transfer learning-based domain adaptation was applied by pretraining on spoken speech and adapting…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Neural dynamics and brain function · Emotion and Mood Recognition
