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Squeak and rattle noise classification using radial basis function neural networks

journal contribution
posted on 2024-11-02, 13:58 authored by Oleksandr Pogorilyi, Mohammad AtapourfardMohammad Atapourfard, John DavyJohn Davy
In this article, an artificial neural network is proposed to classify short audio sequences of squeak and rattle (S&R) noises. The aim of the classification is to see how accurately the trained classifier can recognize different types of S&R sounds. Having a high accuracy model that can recognize audible S&R noises could help to build an automatic tool able to identify unpleasant vehicle interior sounds in a matter of seconds from a short audio recording of the sounds. In this article, the training method of the classifier is proposed, and the results show that the trained model can identify various classes of S&R noises: simple (binary clas- sification) and complex ones (multi class classification).

History

Journal

Noise Control Engineering Journal

Volume

68

Issue

4

Start page

283

End page

293

Total pages

11

Publisher

Institute of Noise Control Engineering

Place published

United States

Language

English

Copyright

© 2020 Institute of Noise Control Engineering.

Former Identifier

2006101312

Esploro creation date

2023-04-28

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