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Deep-learning source localization using autocorrelation functions from a single hydrophone in deep ocean

Yining Liu, Haiqiang Niu, Zhenglin Li, Mengyuan Wang

2021JASA Express Letters25 citationsDOIOpen Access PDF

Abstract

In the direct arrival zone of the deep ocean, the multi-path time delays have been used for acoustic source localization. One of the challenges in conventional localization methods is to artificially determine which paths the extracted delays belong to. A convolutional neural network, taking the autocorrelation functions as the input feature directly, is proposed for source localization to avoid the path determination procedure. Since some multi-path arrivals may not be visible due to absorption in the bottom of the ocean, a data augmentation method based on a ray propagation model is proposed. Tests on simulated and real data validate the method.

Topics & Concepts

AutocorrelationHydrophoneComputer sciencePath (computing)Convolutional neural networkFeature (linguistics)Artificial intelligenceDeep learningPattern recognition (psychology)GeologyAcousticsAlgorithmMathematicsPhysicsStatisticsPhilosophyLinguisticsProgramming languageUnderwater Acoustics ResearchGeophysical Methods and ApplicationsSpeech and Audio Processing
Deep-learning source localization using autocorrelation functions from a single hydrophone in deep ocean | Litcius