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A new method for low-rank transform domain adaptive filtering

机译:低秩变换域自适应滤波的新方法

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摘要

This paper introduces a least squares, matrix-based framework for adaptive filtering that includes normalized least mean squares (NLMS), affine projection (AP) and recursive least squares (RLS) as special cases. We then introduce a method for extracting a low-rank underdetermined solution from an overdetermined or a high-rank underdetermined least squares problem using a part of a unitary transformation. We show how to create optimal, low-rank transformations within this framework. For obtaining computationally competitive versions of our approach, we use the discrete Fourier transform (DFT). We convert the complex-valued DFT-based solution into a real solution. The most significant bottleneck in the optimal version of the algorithm lies in having to calculate the full-length transform domain error vector. We overcome this difficulty by using a statistical approach involving the transform of the signal rather than that of the error to estimate the best low-rank transform at each iteration. We also employ an innovative mixed domain approach, in which we jointly solve time and frequency domain equations. This allows us to achieve very good performance using a transform order that is lower than the length of the filter. Thus, we are able to achieve very fast convergence at low complexity. Using the acoustic echo cancellation problem, we show that our algorithm performs better than NLMS and AP and competes well with FTF-RLS for low SNR conditions. The algorithm lies in between affine projection and FTF-RLS, both in terms of its complexity and its performance.
机译:本文介绍了一种基于最小二乘法的基于矩阵的自适应滤波框架,其中包括归一化最小均方(NLMS),仿射投影(AP)和递归最小二乘(RLS)作为特例。然后,我们介绍了一种使用一元变换的一部分从超定或高阶不确定最小二乘问题中提取低阶不确定解的方法。我们展示了如何在此框架内创建最佳的低阶转换。为了获得我们方法的计算竞争版本,我们使用离散傅里叶变换(DFT)。我们将基于DFT的复值解决方案转换为实际解决方案。该算法的最佳版本中最重要的瓶颈在于必须计算全长变换域误差向量。我们通过使用一种统计方法克服了这一困难,该方法涉及信号的变换而不是误差的变换,以估计每次迭代的最佳低秩变换。我们还采用了创新的混合域方法,在该方法中,我们共同求解时域和频域方程。这使我们能够使用低于滤波器长度的变换顺序来获得非常好的性能。因此,我们能够以低复杂度实现非常快速的收敛。使用声学回声消除问题,我们证明了我们的算法性能优于NLMS和AP,并且在低SNR条件下与FTF-RLS竞争良好。就复杂性和性能而言,该算法位于仿射投影和FTF-RLS之间。

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