Litcius/Paper detail

Deep transfer learning for underwater direction of arrival using one vector sensor

Huaigang Cao, Wenbo Wang, Lin Su, Haiyan Ni, Peter Gerstoft, Qunyan Ren, Li Ma

2021The Journal of the Acoustical Society of America62 citationsDOI

Abstract

A deep transfer learning (DTL) method is proposed for the direction of arrival (DOA) estimation using a single-vector sensor. The method involves training of a convolutional neural network (CNN) with synthetic data in source domain and then adapting the source domain to target domain with available at-sea data. The CNN is fed with the cross-spectrum of acoustical pressure and particle velocity during the training process to learn DOAs of a moving surface ship. For domain adaptation, first convolutional layers of the pre-trained CNN are copied to a target CNN, and the remaining layers of the target CNN are randomly initialized and trained on at-sea data. Numerical tests and real data results suggest that the DTL yields more reliable DOA estimates than a conventional CNN, especially with interfering sources.

Topics & Concepts

Convolutional neural networkTransfer of learningComputer scienceDirection of arrivalArtificial intelligenceDomain adaptationDeep learningDomain (mathematical analysis)UnderwaterTime domainPattern recognition (psychology)Frequency domainProcess (computing)Speech recognitionAlgorithmComputer visionGeologyTelecommunicationsMathematicsOceanographyMathematical analysisAntenna (radio)Classifier (UML)Operating systemUnderwater Acoustics ResearchSpeech and Audio ProcessingMarine animal studies overview