Filters and Matrix Factorization
Palle Jorgensen, Myung-Sin Song

TL;DR
This paper introduces explicit matrix algorithms for multi-phase filtering, enabling efficient analysis and synthesis of signals by representing complex filter operations as matrix factorizations, including non-polynomial filter banks.
Contribution
It presents novel matrix factorization algorithms for multi-band filtering that handle non-polynomial filters and incorporate sampling operations within a unified matrix framework.
Findings
Matrix algorithms effectively decompose multi-band filtering processes.
The approach handles non-polynomial filter banks.
Implementation simplifies complex filtering operations into elementary steps.
Abstract
We give a number of explicit matrix-algorithms for analysis/synthesis in multi-phase filtering; i.e., the operation on discrete-time signals which allow a separation into frequency-band components, one for each of the ranges of bands, say , starting with low-pass, and then corresponding filtering in the other band-ranges. If there are bands, the individual filters will be combined into a single matrix action; so a representation of the combined operation on all bands by an matrix, where the corresponding matrix-entries are periodic functions; or their extensions to functions of a complex variable. Hence our setting entails a fixed matrix over a prescribed algebra of functions of a complex variable. In the case of polynomial filters, the factorizations will always be finite. A novelty here is that we allow for a wide family of non-polynomial…
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Taxonomy
TopicsDigital Filter Design and Implementation · Mathematical Analysis and Transform Methods · Image and Signal Denoising Methods
