This article presents a new class of constrained and specialized Auto-Regressive (AR) processes. They are derived from lattice filters where some reflection coefficients are forced to zero at a priori locations. Optimizing the filter topology allows to build parametric spectral models that have a greater number of poles than the number of parameters needed to describe their location. These NUT (Non-Uniform Topology) models are assessed by evaluating the reduction of modeling error with respect to conventional AR models.
Dario Floreano, Valentin Wüest, Fabio Bergonti
Mahsa Shoaran, Uisub Shin, Bingzhao Zhu
Klaus Kern, Marko Burghard, Lukas Powalla