基于SVM分类器和微多普勒特征的声纳目标自动识别

IF 0.6 4区 物理与天体物理 Q4 ACOUSTICS Archives of Acoustics Pub Date : 2023-07-20 DOI:10.24425/aoa.2022.142909
A. Saffari, S. Zahiri, Navid Khozein Ghanad
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引用次数: 1

摘要

在本文中,我们提出使用螺旋桨调制的传输信号(称为声纳微多普勒)和不同的支持向量机(SVM)核来自动识别运动声纳目标。一般来说,在声纳目标识别领域工作的研究人员和工匠面临的主要挑战是缺乏有效和全面的数据库。因此,利用一个综合的数学模型来模拟从目标接收到的信号可以应对这一挑战。本文所采用的数学模型很好地模拟了运动声纳目标的回波信号。由此产生的信号具有独特的特性,被称为频率特征。然而,为了降低模型的复杂性,使用了128点快速傅里叶变换(FFT)。所选择的SVM分类是最流行的机器学习算法,主要有三个核函数:RBF核、线性核和多项式核。对不同信噪比和不同视角下的目标正确识别精度进行了评估。评估了不同信噪比(- 20、- 15、- 10、- 5、0、5、10、15、20)和不同视角(10、20、30、40、50、60、70、80)下目标的精度检测。为了进行更公平的比较,采用了两种反向传播(MLP-BP)训练方法的多层感知器神经网络和灰狼优化(MLP-GWO)算法。但遗憾的是,考虑到班级的数量,它的表现并不令人满意。结果表明,RBF核在高信噪比(信噪比为20,视角为10)下具有更好的识别能力,准确率达到98.528%。
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Using SVM Classifier and Micro-Doppler Signature for Automatic Recognition of Sonar Targets
In this paper, we propose using a propeller modulation on the transmitted signal (called sonar micro-Doppler) and different support vector machine (SVM) kernels for automatic recognition of moving sonar targets. In general, the main challenge for researchers and craftsmen working in the field of sonar target recognition is the lack of access to a valid and comprehensive database. Therefore, using a comprehensive mathematical model to simulate the signal received from the target can respond to this challenge. The mathematical model used in this paper simulates the return signal of moving sonar targets well. The resulting signals have unique properties and are known as frequency signatures. However, to reduce the complexity of the model, the 128-point fast Fourier transform (FFT) is used. The selected SVM classification is the most popular machine learning algorithm with three main kernel functions: RBF kernel, linear kernel, and polynomial kernel tested. The accuracy of correctly recognizing targets for different signal-to-noise ratios (SNR) and different viewing angles was assessed. Accuracy detection of targets for different SNRs ( − 20, − 15, − 10, − 5, 0, 5, 10, 15, 20) and different viewing angles (10, 20, 30, 40, 50, 60, 70, 80) is evaluated. For a more fair comparison, multilayer perceptron neural network with two back-propagation (MLP-BP) training methods and gray wolf optimization (MLP-GWO) algorithm were used. But unfortunately, considering the number of classes, its performance was not satisfactory. The results showed that the RBF kernel is more capable for high SNRs (SNR = 20, viewing angle = 10) with an accuracy of 98.528%.
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来源期刊
Archives of Acoustics
Archives of Acoustics 物理-声学
CiteScore
1.80
自引率
11.10%
发文量
0
审稿时长
6-12 weeks
期刊介绍: Archives of Acoustics, the peer-reviewed quarterly journal publishes original research papers from all areas of acoustics like: acoustical measurements and instrumentation, acoustics of musics, acousto-optics, architectural, building and environmental acoustics, bioacoustics, electroacoustics, linear and nonlinear acoustics, noise and vibration, physical and chemical effects of sound, physiological acoustics, psychoacoustics, quantum acoustics, speech processing and communication systems, speech production and perception, transducers, ultrasonics, underwater acoustics.
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