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 [BibTeX] [Marc21]
Deep learning architectures for estimating breathing signal and respiratory parameters from speech recordings
Type of publication: Journal paper
Citation: Nallanthighal_NEURALNETWORKS_2021
Publication status: Accepted
Journal: Neural Networks
Volume: 141
Year: 2021
Pages: 211--224
ISSN: 0893-6080
DOI: https://doi.org/10.1016/j.neunet.2021.03.029
Abstract: Respiration is an essential and primary mechanism for speech production. We first inhale and then produce speech while exhaling. When we run out of breath, we stop speaking and inhale. Though this process is involuntary, speech production involves a systematic outflow of air during exhalation characterized by linguistic content and prosodic factors of the utterance. Thus speech and respiration are closely related, and modeling this relationship makes sensing respiratory dynamics directly from the speech plausible, however is not well explored. In this article, we conduct a comprehensive study to explore techniques for sensing breathing signal and breathing parameters from speech using deep learning architectures and address the challenges involved in establishing the practical purpose of this technology. Estimating the breathing pattern from the speech would give us information about the respiratory parameters, thus enabling us to understand the respiratory health using one’s speech.
Keywords: deep neural networks, Respiratory parameters, signal processing, Speech breathing, Speech technology
Projects Idiap
TIPS
TAPAS
Authors Nallanthighal, Venkata Srikanth
Mostaani, Zohreh
Härmä, Aki
Strik, Helmer
Magimai.-Doss, Mathew
Added by: [UNK]
Total mark: 0
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