SDCLLGASJul 17, 2024

Pre-Trained Foundation Model representations to uncover Breathing patterns in Speech

arXiv:2407.13035v18 citationsh-index: 28
Originality Incremental advance
AI Analysis

This work provides a non-invasive, equipment-free method for monitoring respiratory rate, which is a vital health metric, though it is incremental as it builds on existing machine learning approaches for bio-signal estimation.

The researchers tackled the problem of estimating respiratory rate from speech signals, achieving a mean absolute error of approximately 1.6 breaths per minute using pre-trained Wav2Vec2 representations with a Conv-LSTM model.

The process of human speech production involves coordinated respiratory action to elicit acoustic speech signals. Typically, speech is produced when air is forced from the lungs and is modulated by the vocal tract, where such actions are interspersed by moments of breathing in air (inhalation) to refill the lungs again. Respiratory rate (RR) is a vital metric that is used to assess the overall health, fitness, and general well-being of an individual. Existing approaches to measure RR (number of breaths one takes in a minute) are performed using specialized equipment or training. Studies have demonstrated that machine learning algorithms can be used to estimate RR using bio-sensor signals as input. Speech-based estimation of RR can offer an effective approach to measure the vital metric without requiring any specialized equipment or sensors. This work investigates a machine learning based approach to estimate RR from speech segments obtained from subjects speaking to a close-talking microphone device. Data were collected from N=26 individuals, where the groundtruth RR was obtained through commercial grade chest-belts and then manually corrected for any errors. A convolutional long-short term memory network (Conv-LSTM) is proposed to estimate respiration time-series data from the speech signal. We demonstrate that the use of pre-trained representations obtained from a foundation model, such as Wav2Vec2, can be used to estimate respiration-time-series with low root-mean-squared error and high correlation coefficient, when compared with the baseline. The model-driven time series can be used to estimate $RR$ with a low mean absolute error (MAE) ~ 1.6 breaths/min.

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