Sound Field Estimation Using Deep Kernel Learning Regularized by the Wave Equation
(2024) 18th International Workshop on Acoustic Signal Enhancement, IWAENC 2024 p.319-323- Abstract
In this work, we introduce a spatio-temporal kernel for Gaussian process (GP) regression-based sound field estimation. Notably, GPs have the attractive property that the sound field is a linear function of the measurements, allowing the field to be estimated efficiently from distributed microphone measurements. However, to ensure analytical tractability, most existing kernels for sound field estimation have been formulated in the frequency domain, formed independently for each frequency. To address the analytical intractability of spatio-temporal kernels, we here propose to instead learn the kernel directly from data by the means of deep kernel learning. Furthermore, to improve the generalization of the deep kernel, we propose a method... (More)
In this work, we introduce a spatio-temporal kernel for Gaussian process (GP) regression-based sound field estimation. Notably, GPs have the attractive property that the sound field is a linear function of the measurements, allowing the field to be estimated efficiently from distributed microphone measurements. However, to ensure analytical tractability, most existing kernels for sound field estimation have been formulated in the frequency domain, formed independently for each frequency. To address the analytical intractability of spatio-temporal kernels, we here propose to instead learn the kernel directly from data by the means of deep kernel learning. Furthermore, to improve the generalization of the deep kernel, we propose a method for regularizing the learning process using the wave equation. The representational advantages of the deep kernel and the improved generalization obtained by using the wave equation regularization are illustrated using numerical simulations.
(Less)
- author
- Sundstrom, David
LU
; Koyama, Shoichi
and Jakobsson, Andreas
LU
- organization
- publishing date
- 2024
- type
- Chapter in Book/Report/Conference proceeding
- publication status
- published
- subject
- keywords
- deep kernel learning, Gaussian processes, Sound field estimation, wave equation
- host publication
- 2024 18th International Workshop on Acoustic Signal Enhancement, IWAENC 2024 - Proceedings
- pages
- 5 pages
- publisher
- IEEE - Institute of Electrical and Electronics Engineers Inc.
- conference name
- 18th International Workshop on Acoustic Signal Enhancement, IWAENC 2024
- conference location
- Aalborg, Denmark
- conference dates
- 2024-09-09 - 2024-09-12
- external identifiers
-
- scopus:85207224693
- ISBN
- 9798350361858
- DOI
- 10.1109/IWAENC61483.2024.10694575
- language
- English
- LU publication?
- yes
- additional info
- Publisher Copyright: © 2024 IEEE.
- id
- 1b927f78-b352-4e14-b85a-e9bb2276f060
- date added to LUP
- 2024-11-15 15:38:28
- date last changed
- 2025-04-04 14:48:09
@inproceedings{1b927f78-b352-4e14-b85a-e9bb2276f060, abstract = {{<p>In this work, we introduce a spatio-temporal kernel for Gaussian process (GP) regression-based sound field estimation. Notably, GPs have the attractive property that the sound field is a linear function of the measurements, allowing the field to be estimated efficiently from distributed microphone measurements. However, to ensure analytical tractability, most existing kernels for sound field estimation have been formulated in the frequency domain, formed independently for each frequency. To address the analytical intractability of spatio-temporal kernels, we here propose to instead learn the kernel directly from data by the means of deep kernel learning. Furthermore, to improve the generalization of the deep kernel, we propose a method for regularizing the learning process using the wave equation. The representational advantages of the deep kernel and the improved generalization obtained by using the wave equation regularization are illustrated using numerical simulations.</p>}}, author = {{Sundstrom, David and Koyama, Shoichi and Jakobsson, Andreas}}, booktitle = {{2024 18th International Workshop on Acoustic Signal Enhancement, IWAENC 2024 - Proceedings}}, isbn = {{9798350361858}}, keywords = {{deep kernel learning; Gaussian processes; Sound field estimation; wave equation}}, language = {{eng}}, pages = {{319--323}}, publisher = {{IEEE - Institute of Electrical and Electronics Engineers Inc.}}, title = {{Sound Field Estimation Using Deep Kernel Learning Regularized by the Wave Equation}}, url = {{http://dx.doi.org/10.1109/IWAENC61483.2024.10694575}}, doi = {{10.1109/IWAENC61483.2024.10694575}}, year = {{2024}}, }