PuSH - Publikationsserver des Helmholtz Zentrums München

Patricio, F.P.* ; Catala, P. ; Krahmer, F.*

Noisy rin Unlimited svia adaptive modulo representations.

In: (2024 International Workshop on the Theory of Computational Sensing and its Applications to Radar, Multimodal Sensing and Imaging, CoSeRa 2024). 2024. 47-51 (2024 International Workshop on the Theory of Computational Sensing and its Applications to Radar, Multimodal Sensing and Imaging, CoSeRa 2024)
DOI
Recent works put forth the Unlimited Sensing Framework (USF), a novel approach to analog-to-digital conversion for high dynamic range sensing. It addresses the saturation phenomenon that commonly arises when physical measurements exceed the dynamic range of a sensor, yielding permanent loss of the input data. However, the USF still has some limitations when dealing with random noise. In the present paper, we propose a novel iterative method to tackle unlimited sensing in a noisy setting. In one step, our approach applies local transformations of the range to remove strong artifacts caused by the noise on local subdivisions of the domain. In the following step, the signal is then approximated via a least squares method. These two types of steps are then alternated. We illustrate the performances of our algorithm in high noise regime.
Altmetric
Weitere Metriken?
Zusatzinfos bearbeiten [➜Einloggen]
Publikationstyp Artikel: Konferenzbeitrag
Korrespondenzautor
Schlagwörter Analog-to-digital ; High-dynamic Range ; Inverse Problems ; Least-squares ; Modulo Sampling ; Shannon Sampling
ISSN (print) / ISBN [9798350365504]
Konferenztitel 2024 International Workshop on the Theory of Computational Sensing and its Applications to Radar, Multimodal Sensing and Imaging, CoSeRa 2024
Quellenangaben Band: , Heft: , Seiten: 47-51 Artikelnummer: , Supplement: ,
Nichtpatentliteratur Publikationen