Litcius/Paper detail

Source depth estimation using spectral transformations and convolutional neural network in a deep-sea environment

Wenbo Wang, Zhen Wang, Lin Su, Tao Hu, Qunyan Ren, Peter Gerstoft, Li Ma

2020The Journal of the Acoustical Society of America43 citationsDOI

Abstract

Multiple approaches for depth estimation in deep-ocean environments are discussed. First, a multispectral transformation for depth estimation (MSTDE) method based on the low-spatial-frequency interference in a constant sound speed is derived to estimate the source depth directly. To overcome the limitation of real sound-speed profiles and source bandwidths on the accuracy of MSTDE, a method based on a convolution neural network (CNN) and conventional beamforming (CBF) preprocessing is proposed. Further, transfer learning is adapted to tackle the effect of noise on the estimation result. At-sea data are used to test the performance of these methods, and results suggest that (1) the MSTDE can estimate the depth; however, the error increases with distance; (2) MSTDE error can be moderately compensated through a calculated factor; (3) the performance of deep-learning approach using CBF preprocessing is much better than those of MSTDE and traditional CNN.

Topics & Concepts

Computer sciencePreprocessorConvolutional neural networkTransformation (genetics)Multispectral imageArtificial intelligenceDeep learningInterference (communication)Convolution (computer science)BeamformingNoise (video)Pattern recognition (psychology)Artificial neural networkAlgorithmImage (mathematics)TelecommunicationsChannel (broadcasting)GeneBiochemistryChemistryUnderwater Acoustics ResearchUnderwater Vehicles and Communication SystemsSpeech and Audio Processing