Banert, Sebastian und Brauer, Christoph und Lorenz, Dirk und Tondji, Lionel (2026) Why the noise model matters: A performance gap in learned regularization. Inverse Problems, 42 (2). Institute of Physics (IOP) Publishing. doi: 10.1088/1361-6420/ae3f4c. ISSN 0266-5611.
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Offizielle URL: https://iopscience.iop.org/article/10.1088/1361-6420/ae3f4c
Kurzfassung
This article addresses the challenge of learning effective regularizers for linear inverse problems. We analyze and compare several types of learned variational regularization against the theoretical benchmark of the optimal affine reconstruction, i.e. the best possible affine linear map for minimizing the mean squared error. It is known that this optimal reconstruction can be achieved using Tikhonov regularization, but this requires precise knowledge of the noise covariance to properly weight the data fidelity term. However, in many practical applications, noise statistics are unknown. We therefore investigate the performance of regularization methods learned without access to this noise information, focusing on Tikhonov, Lavrentiev, and quadratic regularization. Our theoretical analysis and numerical experiments demonstrate that for non-white noise, a performance gap emerges between these methods and the optimal affine reconstruction. Furthermore, we show that these different types of regularization yield distinct results, highlighting that the choice of regularizer structure is critical when the noise model is not explicitly learned. Our findings underscore the significant value of accurately modeling or co-learning noise statistics in data-driven regularization.
| elib-URL des Eintrags: | https://elib.dlr.de/221375/ | ||||||||||||||||||||
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| Dokumentart: | Zeitschriftenbeitrag | ||||||||||||||||||||
| Titel: | Why the noise model matters: A performance gap in learned regularization | ||||||||||||||||||||
| Autoren: |
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| Datum: | 10 Februar 2026 | ||||||||||||||||||||
| Erschienen in: | Inverse Problems | ||||||||||||||||||||
| Referierte Publikation: | Ja | ||||||||||||||||||||
| Open Access: | Nein | ||||||||||||||||||||
| Gold Open Access: | Nein | ||||||||||||||||||||
| In SCOPUS: | Ja | ||||||||||||||||||||
| In ISI Web of Science: | Ja | ||||||||||||||||||||
| Band: | 42 | ||||||||||||||||||||
| DOI: | 10.1088/1361-6420/ae3f4c | ||||||||||||||||||||
| Verlag: | Institute of Physics (IOP) Publishing | ||||||||||||||||||||
| Name der Reihe: | Special Issue in Memory of Alfred K. Louis | ||||||||||||||||||||
| ISSN: | 0266-5611 | ||||||||||||||||||||
| Status: | veröffentlicht | ||||||||||||||||||||
| Stichwörter: | Tikhonov regularization, supervised learning, Lavrentiev regularization, variational regularization | ||||||||||||||||||||
| HGF - Forschungsbereich: | Luftfahrt, Raumfahrt und Verkehr | ||||||||||||||||||||
| HGF - Programm: | Luftfahrt | ||||||||||||||||||||
| HGF - Programmthema: | Komponenten und Systeme | ||||||||||||||||||||
| DLR - Schwerpunkt: | Luftfahrt | ||||||||||||||||||||
| DLR - Forschungsgebiet: | L CS - Komponenten und Systeme | ||||||||||||||||||||
| DLR - Teilgebiet (Projekt, Vorhaben): | L - Produktionstechnologien | ||||||||||||||||||||
| Standort: | Stade | ||||||||||||||||||||
| Institute & Einrichtungen: | Institut für Systemleichtbau > Produktionstechnologien SD | ||||||||||||||||||||
| Hinterlegt von: | Brauer, Dr. Christoph | ||||||||||||||||||||
| Hinterlegt am: | 15 Jun 2026 12:16 | ||||||||||||||||||||
| Letzte Änderung: | 15 Jun 2026 12:16 |
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