Cost-efficient training strategies for space-time adaptive processing algorithms

G.K. Borsari, A. Steinhardt
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引用次数: 18

Abstract

Space-time adaptive processing (STAP) usually requires the estimation of large-dimension clutter covariance matrices. The mean loss in output SNR is a function of the number of statistically similar data samples used to estimate the covariance matrix. This number is generally 3 times the dimension of the covariance matrix or more. In nonhomogeneous clutter environments it is difficult to obtain this many statistically similar data samples using a data selection rule that is computationally simple. We present several new training strategies that select data samples from as close to the target range-gate as possible and simultaneously maintain a low computation count. A "training strategy" is the rule used to select data samples for covariance matrix estimation. A new training strategy is presented along with a recursion for efficient estimation of the clutter covariance matrix at each target range-gate. Also, a new training concept called freeze training is presented and shown to reduce the number of computations and to mitigate clutter discretes in nulled output data. A computation-count comparison is presented with each training strategy.
时空自适应处理算法的高效训练策略
时空自适应处理(STAP)通常需要对大维杂波协方差矩阵进行估计。输出信噪比的平均损失是用于估计协方差矩阵的统计相似数据样本数量的函数。这个数字一般是协方差矩阵维数的3倍或更多。在非均匀杂波环境中,使用计算简单的数据选择规则很难获得这么多统计上相似的数据样本。我们提出了几种新的训练策略,从尽可能接近目标距离门的地方选择数据样本,同时保持较低的计算计数。“训练策略”是用于选择数据样本进行协方差矩阵估计的规则。为了有效地估计目标距离门处的杂波协方差矩阵,提出了一种新的递归训练策略。此外,提出了一种新的训练概念,称为冻结训练,以减少计算次数并减轻空输出数据中的杂波离散。对每种训练策略进行了计算-计数比较。
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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