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Machine Learning in Acoustics: A Review and Open-source Repository

Ryan A. McCarthy, You Zhang, Samuel A. Verburg, William F. Jenkins, Peter Gerstoft

2025npj Acoustics7 citationsDOIOpen Access PDF

Abstract

Acoustic data provide scientific and engineering insights in fields ranging from bioacoustics and communications to ocean and earth sciences. In this review, we survey recent advances and the transformative potential of machine learning (ML) in acoustics including deep learning (DL). Using the Python high-level programming language, we demonstrate a broad collection of ML techniques to detect and find patterns for classification, regression, and generation in acoustics data automatically. We have ML examples including acoustic data classification, generative modeling for spatial audio, and physics-informed neural networks. This work includes AcousticsML , a set of practical Jupyter notebook examples on GitHub demonstrating ML benefits and encouraging researchers and practitioners to apply reproducible data-driven approaches to acoustic challenges.

Topics & Concepts

Computer sciencePython (programming language)Artificial intelligenceTransformative learningMachine learningGenerative grammarArtificial neural networkData collectionSet (abstract data type)Deep learningData scienceHidden Markov modelBioacousticsData setWorkflowRangingSonarUnderwater acousticsGenerative modelAttunementDeep neural networksData modelingHuman–computer interactionProfiling (computer programming)Music and Audio ProcessingSpeech and Audio ProcessingModel Reduction and Neural Networks
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