Classification of training data with reduced-rank generalized inner product

M. Tinston, W. Ogle, M. Picciolo, J. S. Goldstein
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引用次数: 3

Abstract

Selection of training data for space-time adaptive processing in radar systems remains one of the critical problems to be solved. The practical application of optimal detection theory relies on a large number of i.i.d. training samples. The required homogeneity is typically assumed to be satisfied by range cells adjacent to the cell under test. This is typically not valid in real-world applications. The generalized inner product has previously been proposed to assist in training data selection. This paper introduces two innovations: (1) the generalized inner product in the data-adaptive reduced-rank subspace of the multistage Wiener filter; and (2) classification of the available data into distinct, self-homogenous sets. Injected targets in recorded data from the MCARM program are used to assess performance. Training with data classified within the multistage Wiener filter subspace, also known as the Krylov subspace, is shown to outperform the conventional technique of selecting adjacent training cells.
训练数据的降阶广义内积分类
雷达系统时空自适应处理训练数据的选择一直是需要解决的关键问题之一。最优检测理论的实际应用依赖于大量的识别训练样本。所要求的均匀性通常假定是由与被测单元相邻的距离单元满足的。这在实际应用程序中通常是无效的。广义内积以前曾被提出用来辅助训练数据的选择。本文介绍了两个创新:(1)多级维纳滤波器在数据自适应降秩子空间中的广义内积;(2)将可用数据分类为不同的自同质集。MCARM程序记录数据中的注入目标用于评估性能。在多级维纳滤波子空间(也称为Krylov子空间)中分类的数据进行训练,其性能优于选择相邻训练单元的传统技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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