Shot noise reduction in radiographic and tomographic multi-channel imaging with self-supervised deep learning
View Publication
Export
Abstract:
Shot noise is a critical issue in radiographic and tomographic imaging, especially when additional constraints lead to a significant reduction of the signal-to-noise ratio. This paper presents a method for improving the quality of noisy multi-channel imaging datasets, such as data from time or energy-resolved imaging, by exploiting structural similarities between channels. To achieve that, we broaden the application domain of the Noise2Noise self-supervised denoising approach. The method draws pairs of samples from a data distribution with identical signals but uncorrelated noise. It is applicable to multi-channel datasets if adjacent channels provide images with similar enough information but independent noise. We demonstrate the applicability and performance of the method via three case studies, namely spectroscopic X-ray tomography, energy-dispersive neutron tomography, and
in vivo
X-ray cine-radiography.
SEEK ID: https://publications.h-its.org/publications/1798
DOI: 10.1364/OE.492221
Research Groups: Data Mining and Uncertainty Quantification
Publication type: Journal
Journal: Optics Express
Citation: Opt. Express 31(16):26226
Date Published: 2023
Registered Mode: by DOI
Submitter
Citation
Zharov, Y., Ametova, E., Spiecker, R., Baumbach, T., Burca, G., & Heuveline, V. (2023). Shot noise reduction in radiographic and tomographic multi-channel imaging with self-supervised deep learning. In Optics Express (Vol. 31, Issue 16, p. 26226). Optica Publishing Group. https://doi.org/10.1364/oe.492221
Activity
Views: 1329
Created: 16th Feb 2024 at 12:43
Last updated: 5th Mar 2024 at 21:25
Tags
This item has not yet been tagged.
Attributions
None