University of Oulu

A. Arjas, L. Roininen, M. J. Sillanpää and A. Hauptmann, "Blind Hierarchical Deconvolution," 2020 IEEE 30th International Workshop on Machine Learning for Signal Processing (MLSP), Espoo, Finland, 2020, pp. 1-6, doi: 10.1109/MLSP49062.2020.9231822

Blind hierarchical deconvolution

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Author: Arjas, A.1; Roininen, L.2; Sillanpää, M. J.3;
Organizations: 1Research Unit of Mathematical Sciences, University of Oulu, Oulu FI-90014
2School of Engineering Science, Lappeenranta-Lahti University of Technology, Lappeenranta FI-53851
3esearch Unit of Mathematical Sciences, University of Oulu, Oulu FI-90014
4Department of Computer Science, University College London, London WC1E 6BT, UK
Format: article
Version: accepted version
Access: open
Online Access: PDF Full Text (PDF, 0.3 MB)
Persistent link: http://urn.fi/urn:nbn:fi-fe2020102787887
Language: English
Published: Institute of Electrical and Electronic Engineers, 2020
Publish Date: 2020-10-27
Description:

Abstract

Deconvolution is a fundamental inverse problem in signal processing and the prototypical model for recovering a signal from its noisy measurement. Nevertheless, the majority of model-based inversion techniques require knowledge on the convolution kernel to recover an accurate reconstruction and additionally prior assumptions on the regularity of the signal are needed. To overcome these limitations, we parametrise the convolution kernel and prior length-scales, which are then jointly estimated in the inversion procedure. The proposed framework of blind hierarchical deconvolution enables accurate reconstructions of functions with varying regularity and unknown kernel size and can be solved efficiently with an empirical Bayes two-step procedure, where hyperparameters are first estimated by optimisation and other unknowns then by an analytical formula.

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Series: IEEE International Workshop on Machine Learning for Signal Processing
ISSN: 2161-0363
ISSN-E: 2161-0371
ISSN-L: 2161-0363
ISBN: 978-1-7281-6662-9
ISBN Print: 978-1-7281-6663-6
Pages: 1 - 6
DOI: 10.1109/MLSP49062.2020.9231822
OADOI: https://oadoi.org/10.1109/MLSP49062.2020.9231822
Host publication: Proceedings of the IEEE 30th International Workshop on Machine Learning for Signal Processing (MLSP), September 21-24, 2020 Aalto University, Espoo, Finland (virtual conference)
Conference: IEEE International Workshop on Machine Learning for Signal Processing (MLSP)
Type of Publication: A4 Article in conference proceedings
Field of Science: 111 Mathematics
112 Statistics and probability
Subjects:
Funding: This work was supported by the Academy of Finland (project no:s312123, 326341, 334816, 334817) and by the Academy of Finland PROFI5funding for mathematics and AI: data insight for high-dimensional dynamics.
Academy of Finland Grant Number: 312123
334817
Detailed Information: 312123 (Academy of Finland Funding decision)
334817 (Academy of Finland Funding decision)
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