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The fast subsampled-updating fast Newton transversal filter (FSU FNTF) for adapting long FIR filters

机译:快速二次采样更新快速牛顿横向滤波器(FSU FNTF),适用于长FIR滤波器

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The FNTF algorithm starts from the RLS algorithm for adapting FIR filters. The FNTF algorithm approximates the Kalman gain by replacing the sample covariance matrix inverse by a banded matrix: (AR(M) assumption for the input signal). The approximate Kalman gain can still be computed using an exact recursion that involves the prediction pads of two fast transversal filter (FTF) algorithms of order M. We introduce the subsampled updating (SU) approach in which the FNTF filter estimate and Kalman gain are provided at a subsampled rate, say every L samples. The low-complexity prediction part is kept and a Schur type algorithm is used to compute a priori filtering errors at the intermediate time instants, while some convolutions are carried out with the FFT. This leads to the FSU FNTF algorithm which has a low computational complexity for relatively long filters.
机译:FNTF算法从RLS算法开始,用于适配FIR滤波器。 FNTF算法通过用带状矩阵替换采样协方差矩阵逆来近似卡尔曼增益:(输入信号的AR(M)假设)。仍然可以使用涉及两个M阶快速横向滤波器(FTF)算法的预测垫的精确递归来计算近似卡尔曼增益。我们介绍了二次采样更新(SU)方法,其中提供了FNTF滤波器估计和卡尔曼增益以次采样率,每L个采样说一次。保留低复杂度预测部分,并使用Schur类型算法在中间时刻计算先验滤波误差,同时使用FFT进行一些卷积。这导致FSU FNTF算法对于较长的滤波器具有较低的计算复杂度。

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