Room impulse response reconstruction with physics-informed deep learning

Author:

Karakonstantis Xenofon1ORCID,Caviedes-Nozal Diego2,Richard Antoine3,Fernandez-Grande Efren1ORCID

Affiliation:

1. Acoustic Technology, Department of Electrical & Photonics Engineering, Technical University of Denmark 1 , Kongens Lyngby, Denmark

2. Audio Research, GN Audio A/S & Jabra 2 , Ballerup, Denmark

3. Odeon A/S 3 , Kongens Lyngby, Denmark

Abstract

A method is presented for estimating and reconstructing the sound field within a room using physics-informed neural networks. By incorporating a limited set of experimental room impulse responses as training data, this approach combines neural network processing capabilities with the underlying physics of sound propagation, as articulated by the wave equation. The network's ability to estimate particle velocity and intensity, in addition to sound pressure, demonstrates its capacity to represent the flow of acoustic energy and completely characterise the sound field with only a few measurements. Additionally, an investigation into the potential of this network as a tool for improving acoustic simulations is conducted. This is due to its proficiency in offering grid-free sound field mappings with minimal inference time. Furthermore, a study is carried out which encompasses comparative analyses against current approaches for sound field reconstruction. Specifically, the proposed approach is evaluated against both data-driven techniques and elementary wave-based regression methods. The results demonstrate that the physics-informed neural network stands out when reconstructing the early part of the room impulse response, while simultaneously allowing for complete sound field characterisation in the time domain.

Funder

Villum Fonden

Publisher

Acoustical Society of America (ASA)

Reference45 articles.

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