4.7 Article

Using machine learning to evaluate the fidelity of heavy equipment acoustic simulations

期刊

APPLIED ACOUSTICS
卷 187, 期 -, 页码 -

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ELSEVIER SCI LTD
DOI: 10.1016/j.apacoust.2021.108513

关键词

Machine learning; Audio fidelity; Sound quality; Listening tests; Acoustic simulation

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This research focuses on using machine learning models to evaluate the audio fidelity of heavy equipment acoustic simulations. By studying and comparing two datasets, a model is developed that accurately predicts human perception with high accuracy.
Audio quality is an important consideration when creating acoustic simulations. However, there has been a longstanding tradeoff in evaluating the quality or fidelity of sound: subjective listening tests are time consuming and expensive, but objective measures often fail to capture the nuances of human perception. The research presented here seeks to address this problem by investigating the use of machine learning to evaluate the fidelity of heavy equipment acoustic simulations. The developed models are designed to classify sounds into one of two categories, based on whether the audio is natural sounding or artificial sounding. Two distinct datasets are presented. The first, made up of a library of compressed recordings of heavy equipment, is used primarily for developmental purposes. The second, made up of a library of sim-ulated audio clips, is used to test performance for the intended purpose of evaluating simulated audio fidelity. Several common algorithms are compared and various audio features considered in developing the machine learning models. The final model consists of a logistic regression algorithm and uses the input features loudness, sharpness, roughness, fluctuation strength, and Mel-frequency cepstral coeffi-cients. The developed models accurately predict human perceptions of audio fidelity, achieving approx-imately 98% accuracy for both datasets. The accuracies achieved provide evidence that machine learning models could potentially supplant listening tests, although limitations including the scope of the dataset and the small number of listening test participants necessitate further validation.(c) 2021 Elsevier Ltd. All rights reserved.

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