首页> 外文会议>Conference on Automatic Target Recognition XIV; 20040413-20040415; Orlando,FL; US >A Robust Algorithm for Automated Target Recognition Using Precomputed Radar Cross Sections
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A Robust Algorithm for Automated Target Recognition Using Precomputed Radar Cross Sections

机译:使用预先计算的雷达横截面的鲁棒自动目标识别算法

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Passive radar is an emerging technology that offers a number of unique benefits, including covert operation. Many such systems are already capable of detecting and tracking aircraft. The goal of this work is to develop a robust algorithm for adding automated target recognition (ATR) capabilities to existing passive radar systems. In previous papers, we proposed conducting ATR by comparing the precomputed RCS of known targets to that of detected targets. To make the precomputed RCS as accurate as possible, a coordinated flight model is used to estimate aircraft orientation. Once the aircraft's position and orientation are known, it is possible to determine the incident and observed angles on the aircraft, relative to the transmitter and receiver. This makes it possible to extract the appropriate radar cross section (RCS) from our simulated database. This RCS is then scaled to account for propagation losses and the receiver's antenna gain. A Rician likelihood model compares these expected signals from different targets to the received target profile. We have previously employed Monte Carlo runs to gauge the probability of error in the ATR algorithm; however, generation of a statistically significant set of Monte Carlo runs is computationally intensive. As an alternative to Monte Carlo runs, we derive the relative entropy (also known as Kullback-Liebler distance) between two Rician distributions. Since the probability of Type II error in our hypothesis testing problem can be expressed as a function of the relative entropy via Stein's Lemma, this provides us with a computationally efficient method for determining an upper bound on our algorithm's performance. It also provides great insight into the types of classification errors we can expect from our algorithm. This paper compares the numerically approximated probability of Type II error with the results obtained from a set of Monte Carlo runs.
机译:无源雷达是一种新兴技术,具有许多独特的优势,包括秘密操作。许多这样的系统已经能够检测和跟踪飞机。这项工作的目的是开发一种鲁棒的算法,为现有的无源雷达系统增加自动目标识别(ATR)功能。在以前的论文中,我们建议通过比较已知目标的预先计算出的RCS与检测到的目标来进行ATR。为了使预先计算出的RCS尽可能准确,可以使用协调飞行模型来估计飞机的方向。一旦知道了飞机的位置和方向,就可以确定飞机上相对于发射器和接收器的入射角和观察角。这样就可以从我们的模拟数据库中提取适当的雷达横截面(RCS)。然后按比例缩放此RCS以解决传播损耗和接收机的天线增益。 Rician似然模型将来自不同目标的这些预期信号与接收到的目标配置文件进行比较。我们以前曾使用Monte Carlo游程来评估ATR算法中的错误概率。但是,生成具有统计意义的蒙特卡洛游程集需要大量的计算。作为蒙特卡罗运算的替代方法,我们得出两个Rician分布之间的相对熵(也称为Kullback-Liebler距离)。由于我们的假设检验问题中II型错误的概率可以通过斯坦因引理表达为相对熵的函数,因此这为我们提供了一种计算效率高的方法来确定算法性能的上限。它还提供了对我们可以从算法中期望的分类错误类型的深入了解。本文将II类错误的数值近似概率与从一组蒙特卡洛试验获得的结果进行比较。

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