Time-Masked Transformers with Lightweight Test-Time Adaptation for Neural Speech Decoding
Abstract
Speech neuroprostheses aim to restore communication for people with severe paralysis by decoding speech directly from neural activity. To accelerate algorithmic progress, a recent benchmark released intracranial recordings from a paralyzed participant attempting to speak, along with a baseline decoding algorithm. Prior work on the benchmark showed impressive accuracy gains. However, these gains increased computational costs and were not demonstrated in a real-time decoding setting. Here, we make three contributions that pave the way towards accurate, efficient, and real-time neural speech decoding. First, we incorporate large amounts of time-masking during training. On average, over of each trial is masked. Second, we replace the gated recurrent unit (GRU) architecture used in the baseline algorithm with a compact Transformer. The Transformer architecture uses fewer parameters, cuts peak GPU memory usage by , and is significantly faster to calibrate relative to the GRU. Third, we design a lightweight variant of an existing test-time adaptation method developed for decoding handwriting from neural activity. Our variant adapts the model using multiple time-masked augmentations of a single trial and requires only one gradient step per trial. Together, these contributions reduce word error rate by over and effectively mitigate performance degradations across held-out days in a real-time decoding setting while substantially lowering computational costs.
Cite
@article{arxiv.2507.02800,
title = {Time-Masked Transformers with Lightweight Test-Time Adaptation for Neural Speech Decoding},
author = {Ebrahim Feghhi and Shreyas Kaasyap and Nima Hadidi and Jonathan C. Kao},
journal= {arXiv preprint arXiv:2507.02800},
year = {2025}
}
Comments
10 pages, 2 figures