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Deep learning-based DOA estimation using CRNN for underwater acoustic arrays

Xiaoqiang Li, Jianfeng Chen, Jisheng Bai, Muhammad Saad Ayub, Dongzhe Zhang, Mou Wang, Qingli Yan

2022Frontiers in Marine Science18 citationsDOIOpen Access PDF

Abstract

In the marine environment, estimating the direction of arrival (DOA) is challenging because of the multipath signals and low signal-to-noise ratio (SNR). In this paper, we propose a convolutional recurrent neural network (CRNN)-based method for underwater DOA estimation using an acoustic array. The proposed CRNN takes the phase component of the short-time Fourier transform of the array signals as the input feature. The convolutional part of the CRNN extracts high-level features, while the recurrent component captures the temporal dependencies of the features. Moreover, we introduce a residual connection to further improve the performance of DOA estimation. We train the CRNN with multipath signals generated by the BELLHOP model and a uniform line array. Experimental results show that the proposed CRNN yields high-accuracy DOA estimation at different SNR levels, significantly outperforming existing methods. The proposed CRNN also exhibits a relatively short processing time for DOA estimation, extending its applicability.

Topics & Concepts

Computer scienceResidualMultipath propagationConvolutional neural networkDirection of arrivalRecurrent neural networkNoise (video)UnderwaterAlgorithmSpeech recognitionArtificial intelligenceArtificial neural networkGeologyTelecommunicationsChannel (broadcasting)Image (mathematics)Antenna (radio)OceanographyUnderwater Acoustics ResearchSpeech and Audio ProcessingDirection-of-Arrival Estimation Techniques
Deep learning-based DOA estimation using CRNN for underwater acoustic arrays | Litcius