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Divide and conquer approach to improve performance on ATR systems

机译:分而治之的方法来提高ATR系统的性能

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摘要

In this paper different methods applied to the Automatic Target Recognition problem are studied. A database of High Range Resolution radar profiles of six kinds of aircrafts is used to study the performance of four classification methods: k-Nearest Neighbor method, Multilayer Perceptrons, Radial Basis Function Networks, and Support Vector Machines. Results obtained with these classifiers show a high correlation between two of the classes of targets that cause the majority of errors. We propose to split the task into two subtasks. A first one in which the classes of correlated targets are grouped in a single class, and a second one to distinguish between them. Different classifiers are studied to be applied to each subtask. Results demonstrate that Radial Basis Function Networks are very good classifiers for the main subtask, while Support Vector Machines are the best classification method, among the studied, to distinguish between the correlated targets.
机译:本文研究了应用于自动目标识别问题的不同方法。使用六种飞机的高分辨雷达轮廓数据库来研究四种分类方法的性能:k最近邻方法,多层感知器,径向基函数网络和支持向量机。使用这些分类器获得的结果表明,导致大多数错误的两个目标类别之间具有高度相关性。我们建议将任务分为两个子任务。第一个将相关目标的类别分组为一个类别,第二个将它们进行区分。研究了将不同的分类器应用于每个子任务。结果表明,径向基函数网络是主要子任务的很好的分类器,而支持向量机是研究中区分相关目标的最佳分类方法。

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