Műegyetemi Digitális Archívum

Pole Optimization of IIR Filters Using Backpropagation

Date

Type

könyvfejezet

Language

en

Reading access rights:

Open Access

Rights Holder

Budapest University of Technology and Economics, Department of Measurement and Information Systems

Conference Date

2022.02.07-2022.02.08.

Conference Place

Budapest, Hungary

Conference Title

29th Minisymposium of the Department of Measurement and Information Systems

ISBN, e-ISBN

978-963-421-872-2

Container Title

Proceedings of the 29th Minisymposium

Department

Department of Measurement and Information Systems

Version

Kiadói változat

Faculty

Faculty of Electrical Engineering and Informatics

First Page

42

Subject (OSZKAR)

audio filter design
RNN
IIR filter

Gender

Konferenciacikk

University

Budapest University of Technology and Economics

OOC works

Abstract

Audio signal processing is a field where specialized techniques are used to account for the characteristics of hearing. In filter design the resulting transfer function need to follow the specification on an approximately logarithmic frequency scale, which can be done via methods such as frequency warping or fixed-pole parallel filters. Although these IIR filter design techniques are proven in practice, they do not produce optimal pole sets for the given specification. In this paper we present the first experiments of using a gradient-based pole optimization framework implemented in TensorFlow by realizing the IIR filter as a recurrent neural network (RNN). The method can improve the pole set of a filter compared to the initial pole set, resulting in a smaller approximation error. The proposed method is demonstrated using four example filter specifications.

Description

Keywords