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首页> 外文期刊>Soft computing: A fusion of foundations, methodologies and applications >A passive detection algorithm for low-altitude small target based on a wavelet neural network
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A passive detection algorithm for low-altitude small target based on a wavelet neural network

机译:基于小波神经网络的低空小目标的被动检测算法

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摘要

A passive detection algorithm is presented for multiple low-altitude small targets, which employs a wavelet neural network (WNN). The slope, kurtosis, and skewness are employed as the features for low-altitude small target detection, and an algorithm is given to determine the number of targets. A WNN is used to establish a relationship between signal classes and the signal characteristics using training signals. Then, signals are classified as either target present or target not present using the WNN. Indoor data from a research laboratory and outdoor data from a bridge in the Jimo District, Qingdao, were used for training and evaluation. The performance results show that the error rate with the proposed WNN-based algorithm is better than those based on the slope, skewness, and kurtosis of signal. Furthermore, the proposed algorithm is better than those based on other neural networks such as BPNN, RBFNN, SOMNN, and SVM. At a distance of 3 km, the recognition rate is greater than 84%, which is better than other techniques such as visual recognition, acoustic, and active radar.
机译:呈现用于多个低空小目标的被动检测算法,其采用小波神经网络(Wnn)。斜坡,血管增长和偏斜器被用作低空小目标检测的特征,并且给出了一种算法来确定目标的数量。使用训练信号用于建立信号类与信号特性之间的关系。然后,将信号被分类为使用Wnn不存在的目标存在或目标。来自青岛吉米区的一座桥梁的研究实验室和户外数据的室内数据用于培训和评估。性能结果表明,基于WNN的算法的误差率优于信号的斜率,偏移和信号的峰值。此外,所提出的算法优于基于其他神经网络的算法,例如BPNN,RBFNN,SOMNN和SVM。在3公里的距离,识别率大于84%,比其他技术更好,如视觉识别,声学和有源雷达。

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