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Least squares approximation of perfect reconstruction filter banks

机译:完美重建滤波器组的最小二乘近似

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Designing good causal filters for perfect reconstruction (PR) filter banks is a challenging task due to the unusual nature of the design constraints. We present a new least squares (LS) design methodology for approximating PRFBs that avoids most of these difficult constraints. The designer first selects a set of subband analysis filters from an almost unrestricted class of rational filters. Then, given some desired reconstruction delay, this design procedure produces the causal and rational synthesis filters that result in the best least squares approximation to a PRFB. This technique is built on a multi-input multi-output (MIMO) system model for filter banks derived from the filter bank polyphase representation. Using this model, we frame the LS approximation problem for PRFBs as a causal LS equalization problem for MIMO systems. We derive the causal LS solution to this design problem and present an algorithm for computing this solution. The resulting algorithm includes a MIMO spectral factorization that accounts for most of the complexity and computational cost for this design technique. Finally, we consider some design examples and evaluate their performance.
机译:由于设计约束的特殊性质,为完美重构(PR)滤波器组设计好的因果滤波器是一项艰巨的任务。我们提出了一种新的最小二乘(LS)设计方法来近似PRFB,从而避免了大多数这些困难的约束。设计人员首先从几乎不受限制的有理滤波器类别中选择一组子带分析滤波器。然后,给定一些所需的重建延迟,此设计过程将产生因果和有理合成滤波器,从而导致对PRFB的最佳最小二乘近似。该技术建立在多输入多输出(MIMO)系统模型的基础上,该模型用于从滤波器组多相表示派生的滤波器组。使用该模型,我们将PRFB的LS近似问题构架为MIMO系统的因果LS均衡问题。我们推导了针对该设计问题的因果LS解,并提出了一种计算该解的算法。最终的算法包括MIMO频谱分解,该分解解决了该设计技术的大部分复杂性和计算成本。最后,我们考虑一些设计实例并评估其性能。

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