混沌CFAR探测器用于探测陆地和海上点目标

G. Lampropoulos, Ho-fung Leung
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引用次数: 3

摘要

本文提出了一种基于统计检测器和混沌预测器相结合的混沌检测器的新公式。混沌预测器用于估计杂波(即调制分量),而统计检测器用于混沌预测器残差平方的输出。在这里,背景杂波是这个错误组件和任何可能存在的人造点目标。残余误差由残余调制分量、散斑和附加热噪声组成。该探测器已被用于利用广泛的雷达数据探测人造点目标。在雷达或红外杂波中探测小型人造目标是海洋监视、搜索与救援、遥感、水雷探测等许多应用的一个重要领域。已经证明,红外和雷达杂波表现出混沌而不是纯粹的随机行为。从混沌的角度出发,利用广义回归神经网络(GRNN)建立了神经网络预测器。
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Chaotic CFAR detectors for detection of land and sea point targets
This paper presents a new formulation for chaotic detectors which is based on a combination of statistical detectors and chaotic predictors. The chaotic predictors are user to estimate the clutter (i.e., modulation component), while the statistical detectors are used at the output of the squared residual error of the chaotic predictor. Here, the background clutter is this error component and any man-made point target that may be present. The residual error consists of the residual modulation component, the speckle and additive thermal noise. The proposed detector has been used for detecting man-made point targets using a wide range of radar data. Detection of small man-made targets in radar or infrared clutter is an important area of interest for many applications such as ocean surveillance, search and rescue, remote sensing, mine detection, etc. It has been shown that infrared and radar clutter exhibit chaotic rather than purely random behaviour. From the chaotic point of view, a neural network predictor has been developed using a generalized regression neural network (GRNN).
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