基于深度学习的水声信号DOA估计

Pengfei Li, Yubo Tian
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引用次数: 3

摘要

到达方向(DOA)估计是阵列信号处理的重要组成部分,也是声纳阵列领域的主要任务之一。在DOA估计问题中,最常用的方法是对协方差矩阵进行子空间分解。由于传统神经网络不能同时处理实数和虚数,子空间分解方法不适用于神经网络。受ResNet在计算机视觉领域广泛应用的启发,本文提出了一种利用协方差矩阵作为图像处理的方法,使用包含虚协方差矩阵和实协方差矩阵的双通道矩阵图像作为ResNet的输入来估计水声阵列的DOA。这为解决声场问题提供了一个新的方向估计方法。将ResNet算法与KNN算法和传统MUSIC算法在估计精度和估计时间上进行了比较。仿真实验证明,在低信噪比环境下,ResNet算法具有更高的预测精度和更短的预测时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DOA Estimation of Underwater Acoustic Signals Based on Deep Learning
Direction of arrival (DOA) estimation is an essential part of array signal processing and also one of the main tasks in the field of sonar arrays. The most commonly method among DOA estimation problems is to perform subspace decomposition of the covariance matrix. Since traditional neural networks can’t handle real and imaginary numbers at the same time, the subspace decomposition method is not suitable for neural networks. Inspired by the extensive application of ResNet in the field of computer vision, this paper proposes a method of using the covariance matrix as an image processing, which uses a dual-channel matrix image containing the imaginary covariance matrix and the real covariance matrix as the input of the ResNet to estimate the DOA of the underwater acoustic array. It provides a new perspective for DOA estimation to solve the acoustic field problem. The ResNet algorithm is compared with the KNN algorithm and traditional MUSIC algorithm in terms of estimation accuracy and time. Simulation experiments prove that the ResNet algorithm has greater accuracy and shorter prediction time in a low signal-to-noise ratio environment.
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