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Factorization of paraunitary polyphase matrices using subspace projections

机译:使用子空间投影对超unit元多相矩阵进行因子分解

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Paraunitary filter banks (PUFBs) play an important role in multirate signal processing and image processing applications. In this paper a new factorization technique is presented based on the Singular Value Decomposition (SVD) that decomposes PUFBs into a product of elementary building blocks. These building blocks are parameterized by a set of angles that can be varied independently via optimization techniques to design a particular filter bank satisfying some criterion. The utility of this new matrix decomposition is that fewer free parameters are required to represent a PUFB as compared to conventional lattice factorizations, such as the Givens rotation matrix decomposition. The more economical PUFB representation presented in this paper improves the numerical behavior of nonlinear optimization programs used for designing PUFBs and allows for the design of longer channel filters without incurring additional computational complexity. A simulated design example is presented whereby a causal Finite Impulse Response (FIR) PUFB is designed to approximate an ideal, infinite order PUFB.
机译:超单位滤波器组(PUFB)在多速率信号处理和图像处理应用中起着重要作用。在本文中,提出了一种基于奇异值分解(SVD)的新分解技术,该奇异值分解将PUFB分解为基本构造块的乘积。这些构建块通过一组角度进行参数设置,这些角度可以通过优化技术独立改变,以设计满足某些条件的特定滤波器组。这种新的矩阵分解的用途是,与常规的点阵分解(例如Givens旋转矩阵分解)相比,表示PUFB所需的自由参数更少。本文提出的更为经济的PUFB表示法改善了用于设计PUFB的非线性优化程序的数值性能,并允许设计更长的通道滤波器,而不会引起额外的计算复杂性。给出了一个仿真设计示例,其中将因果有限冲激响应(FIR)PUFB设计为逼近理想的无穷阶PUFB。

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