CLNov 4, 2024

Geometry of orofacial neuromuscular signals: speech articulation decoding using surface electromyography

arXiv:2411.02591v31 citationsh-index: 2J Neural Eng
Originality Incremental advance
AI Analysis

This work addresses restoring speech for individuals with impairments like laryngectomy or stroke, but it is incremental as it focuses on data efficiency and computational constraints.

The study tackled decoding speech articulations from surface electromyography (EMG) signals by revealing that symmetric positive definite matrices serve as a natural embedding space, enabling analysis of distribution shifts across individuals.

Objective. In this article, we present data and methods for decoding speech articulations using surface electromyogram (EMG) signals. EMG-based speech neuroprostheses offer a promising approach for restoring audible speech in individuals who have lost the ability to speak intelligibly due to laryngectomy, neuromuscular diseases, stroke, or trauma-induced damage (e.g., from radiotherapy) to the speech articulators. Approach. To achieve this, we collect EMG signals from the face, jaw, and neck as subjects articulate speech, and we perform EMG-to-speech translation. Main results. Our findings reveal that the manifold of symmetric positive definite (SPD) matrices serves as a natural embedding space for EMG signals. Specifically, we provide an algebraic interpretation of the manifold-valued EMG data using linear transformations, and we analyze and quantify distribution shifts in EMG signals across individuals. Significance. Overall, our approach demonstrates significant potential for developing neural networks that are both data- and parameter-efficient, an important consideration for EMG-based systems, which face challenges in large-scale data collection and operate under limited computational resources on embedded devices.

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