Target detection using a neural network based passive sonar system

A. Khotanzad, J. H. Lu, M. Srinath
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引用次数: 18

Abstract

A neural-network (NN)-based system for the passive detection of targetlike signals in underwater acoustic fields is being developed. The input to the NN is an intensity modulated signal, which is a measure of the power of the received signal plus noise at different frequencies as time varies. Thus, a two-dimensional array (image) is to be examined to reach a decision. It is assumed that the target emits a sinusoidal signal at a fixed frequency f/sub 0/. If the target moves with a constant speed with respect to the receiver, the received signal frequency will be (1+ delta ) f/sub 0/, where delta is the Doppler shift. The received two-dimensional image is first thresholded to obtain a binary (0 or 1) image. The first stage of the proposed system consists of an autoassociative memory (ASM) whose function is to eliminate the noise and reconstruct the received signal. The output of the ASM is input to the second stage of the system, which consists of a multilayer perceptron (MLP) classifier trained using the backpropagation algorithm. The MLP outputs a decision regarding the presence or absence of the targets. Results of an initial experimental study are reported. A promising classification accuracy of 97% for targets and 100% for no-targets has been obtained.<>
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基于神经网络的被动声纳目标探测系统
研究了一种基于神经网络的水声类目标信号被动检测系统。神经网络的输入是强度调制信号,它是随时间变化在不同频率上接收到的信号加上噪声的功率的度量。因此,需要检查一个二维数组(图像)来做出决定。假设目标以固定频率f/sub 0/发射正弦信号。如果目标相对于接收器以恒定速度移动,则接收到的信号频率将为(1+ δ) f/sub 0/,其中δ为多普勒频移。首先对所接收的二维图像进行阈值处理,以获得二值(0或1)图像。该系统的第一阶段由自关联存储器(ASM)组成,其功能是消除噪声并重构接收信号。ASM的输出输入到系统的第二阶段,该阶段由使用反向传播算法训练的多层感知器(MLP)分类器组成。MLP输出一个关于目标存在与否的决策。本文报道了初步实验研究的结果。有目标的分类准确率为97%,无目标的分类准确率为100%。
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