Radar signal classification algorithms synthesis and analysis

L. Dorosinskiy, F. Myasnikov
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Abstract

The main role in the task of process remote sensing data of the Earth surface are played algorithms of forming and classification those data. From the statistical point of view the solution is based on the maximum-likelihood method. The paper presents analytical equations for likelihood coefficients and the structural scheme of their forming in the solution of radar signal recognition. To analyze the efficiency of the proposed algorithms are found boundary equations for probability calculating of correct signals with the usage of Chernoff-Kailath ratios. This ratios evaluate the upper and lower probability boundaries of correct and incorrect decisions in the case of classification of optional class number from different type surfaces.
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雷达信号分类算法综合与分析
地表遥感数据的生成和分类算法在地表遥感数据处理任务中起着重要的作用。从统计学的角度来看,解决方案是基于最大似然方法。本文给出了雷达信号识别求解中似然系数的解析方程及其形成的结构方案。为了分析所提算法的效率,利用Chernoff-Kailath比值建立了计算正确信号概率的边界方程。该比值评价了从不同类型曲面对可选类数进行分类时,正确决策和错误决策的上、下概率边界。
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