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首页> 外文期刊>IEEE Transactions on Signal Processing >Fast Newton transversal filters-a new class of adaptive estimation algorithms
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Fast Newton transversal filters-a new class of adaptive estimation algorithms

机译:快速牛顿横向滤波器-一种新型的自适应估计算法

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摘要

A class of adaptive algorithms for the estimation of FIR (finite impulse response) transversal filters is presented. The main characteristic of this class is the fast computation of the gain vector needed for the adaptation of the transversal filters. The method for deriving these algorithms is based on the assumption that the input signal is autoregressive of order M, where M can be much smaller than the order of the filter to be estimated. Under this assumption the covariance matrix of the input signal is estimated by extending in a min-max way the M order sample covariance matrix. This estimate can be regarded as a generalization of the diagonal covariance matrix used in LMS and leads to an efficient computation of the gain needed for the adaptation. The new class of algorithms contains the LMS and the fast versions of LS as special cases. The complexity changes linearly with M, starting from the complexity of the LMS (for M=0) and ending at the complexity of the fast versions of LS.
机译:提出了一类用于估计FIR(有限脉冲响应)横向滤波器的自适应算法。此类的主要特征是快速计算横向滤波器的适配所需的增益向量。推导这些算法的方法基于以下假设:输入信号是自回归阶次M的假设,其中M可以比要估计的滤波器阶次小得多。在此假设下,通过以最小-最大方式扩展M阶样本协方差矩阵来估计输入信号的协方差矩阵。该估计可以看作是LMS中使用的对角协方差矩阵的一般化,并且可以有效地计算自适应所需的增益。新型算法包含LMS和LS的快速版本作为特殊情况。复杂度随M线性变化,从LMS的复杂度(对于M = 0)开始,到LS的快速版本的复杂度结束。

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