Research on Active Sonar Object Echo Signal Enhancement Technology in the Spatial Fractional Fourier Domain

IF 1.7 4区 物理与天体物理 Acoustics Australia Pub Date : 2021-05-28 DOI:10.1007/s40857-021-00244-3
Yang Yang, Shuo Yang, Yuanming Ding
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引用次数: 1

Abstract

The detection and recognition of quiet, small objects in shallow water is one of the challenges in underwater acoustic signal processing, especially for buried objects. The seafloor strongly absorbs sound waves, while the object echo signals are weak, which makes the detection of the buried objects more difficult. Realizing object echo signal enhancement in a seafloor reverberation background and improving the signal-to-reverberation ratio (SRR) are critical problems. Based on the difference in energy aggregation between object echo signals and reverberation in the optimal fractional Fourier domain, a blind separation algorithm in the spatial fractional Fourier domain is presented. Expressions of the object rigid scattering components and the reverberation in the fractional Fourier domain are derived, and the energy distribution characteristics of both are analyzed. The objective function is constructed by the generalized correlation matrix of the multiple array signals in the optimal fractional Fourier domain, and the object rigid scattering components are obtained by approximate joint diagonalization. The simulation and data processing results show that the spatial fractional domain blind separation algorithm (FRFTBSS) can improve the signal-to-reverberation ratio. Compared with time–frequency domain blind separation (TFBSS), the proposed algorithm avoids the cross-item interference and performs better at lower SRR.

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空间分数傅立叶域主动声纳目标回波信号增强技术研究
探测和识别浅水中安静的小物体是水声信号处理的挑战之一,尤其是对埋藏物体。海底强烈吸收声波,而物体回波信号较弱,这使得探测埋藏物体变得更加困难。实现海底混响背景下目标回波信号的增强和提高信噪比是关键问题。基于最优分数傅立叶域中目标回波信号和混响之间能量聚集的差异,提出了一种空间分数傅立叶域的盲分离算法。推导了分数傅立叶域中物体刚性散射分量和混响的表达式,并分析了两者的能量分布特性。目标函数由最优分数傅立叶域中多个阵列信号的广义相关矩阵构造,并通过近似联合对角化获得目标刚性散射分量。仿真和数据处理结果表明,空间分数域盲分离算法(FRFTBSS)可以提高信噪比。与时频域盲分离(TFBSS)相比,该算法避免了交叉项干扰,在较低的SRR下性能更好。
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来源期刊
Acoustics Australia
Acoustics Australia ACOUSTICS-
自引率
5.90%
发文量
24
期刊介绍: Acoustics Australia, the journal of the Australian Acoustical Society, has been publishing high quality research and technical papers in all areas of acoustics since commencement in 1972. The target audience for the journal includes both researchers and practitioners. It aims to publish papers and technical notes that are relevant to current acoustics and of interest to members of the Society. These include but are not limited to: Architectural and Building Acoustics, Environmental Noise, Underwater Acoustics, Engineering Noise and Vibration Control, Occupational Noise Management, Hearing, Musical Acoustics.
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