A New Non-Negative Matrix Co-Factorisation Approach for Noisy Neonatal
Chest Sound Separation
- URL: http://arxiv.org/abs/2109.03275v1
- Date: Sat, 4 Sep 2021 02:48:02 GMT
- Title: A New Non-Negative Matrix Co-Factorisation Approach for Noisy Neonatal
Chest Sound Separation
- Authors: Ethan Grooby, Jinyuan He, Davood Fattahi, Lindsay Zhou, Arrabella
King, Ashwin Ramanathan, Atul Malhotra, Guy A. Dumont, Faezeh Marzbanrad
- Abstract summary: A new Non-negative Matrix Co-Factorisation-based approach is proposed to separate noisy chest sound recordings into heart, lung, and noise components.
This method is achieved through training with 20 high-quality heart and lung sounds, in parallel with separating the sounds of the noisy recording.
Results show significant improvements in heart and lung sound quality scores respectively, and improved accuracy of 3.6bpm and 1.2bpm in heart and breathing rate estimation.
- Score: 0.09512887847441218
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Obtaining high-quality heart and lung sounds enables clinicians to accurately
assess a newborn's cardio-respiratory health and provide timely care. However,
noisy chest sound recordings are common, hindering timely and accurate
assessment. A new Non-negative Matrix Co-Factorisation-based approach is
proposed to separate noisy chest sound recordings into heart, lung, and noise
components to address this problem. This method is achieved through training
with 20 high-quality heart and lung sounds, in parallel with separating the
sounds of the noisy recording. The method was tested on 68 10-second noisy
recordings containing both heart and lung sounds and compared to the current
state of the art Non-negative Matrix Factorisation methods. Results show
significant improvements in heart and lung sound quality scores respectively,
and improved accuracy of 3.6bpm and 1.2bpm in heart and breathing rate
estimation respectively, when compared to existing methods.
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