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Acoustic Noise Classification Using Selective Discrete Wavelet Transform-Based Mel-Frequency Ceps...

UKSim 2020 | Binti Abdullah S, Zamani M, Demosthenous A | A feature extraction method through wavelet mel-frequency cepstral coefficients (MFCCs) is proposed for acoustic noise classification. The ...

27 March 2020

Acoustic Noise Classification Using Selective Discrete Wavelet Transform-Based Mel-Frequency Cepstral Coefficient

Abstract

A feature extraction method through wavelet mel-frequency cepstral coefficients (MFCCs) is proposed for acoustic noise classification. The method combined with a wavelet sub-band selection technique and a feedforward neural network with two hidden layers, is a promising solution for a compact acoustic noise classification system that could be added to speech enhancement systems and deployed in hearing devices such as cochlear implants. The technique leads to higher classification accuracies (with a mean of 95.25%) across three SNR values, a significantly smaller feature set with 16 features, a reduced memory requirement, and faster training convergence, with a trade-off of slightly higher computational complexity by a factor of 1.89 in comparison to the traditional short-time Fourier transform-based (STFT-based) technique.

Publication Type:Conference
Authors:Binti Abdullah S, Zamani M, Demosthenous A
Publisher:UKSim
Published proceedings:Proceedings of the UKSim-AMSS 22nd International Conference on Modelling & Simulation (UKSim2020)
Publication date:27/03/2020
Name of Conference:UKSim-AMSS 22nd International Conference on Modelling & Simulation (UKSim2020)
Conference place:Cambridge, UK
Conference start date:25/03/2020
Conference finish date:27/03/2019
DOI:10.5013/IJSSST.a.21.02.06
Full Text URL:https://discovery.ucl.ac.uk/id/eprint/10095071/

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