Sequential image recovery using joint hierarchical Bayesian learning
- URL: http://arxiv.org/abs/2206.12745v2
- Date: Fri, 19 May 2023 15:04:48 GMT
- Title: Sequential image recovery using joint hierarchical Bayesian learning
- Authors: Yao Xiao and Jan Glaubitz
- Abstract summary: We present a method based on hierarchical Bayesian learning for the joint recovery of sequential images.
Our method restores the missing information in each image by "borrowing" it from the other images.
Some preliminary results indicate its potential use for sequential deblurring and magnetic resonance imaging.
- Score: 6.881629943427059
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recovering temporal image sequences (videos) based on indirect, noisy, or
incomplete data is an essential yet challenging task. We specifically consider
the case where each data set is missing vital information, which prevents the
accurate recovery of the individual images. Although some recent (variational)
methods have demonstrated high-resolution image recovery based on jointly
recovering sequential images, there remain robustness issues due to parameter
tuning and restrictions on the type of the sequential images. Here, we present
a method based on hierarchical Bayesian learning for the joint recovery of
sequential images that incorporates prior intra- and inter-image information.
Our method restores the missing information in each image by "borrowing" it
from the other images. As a result, \emph{all} of the individual
reconstructions yield improved accuracy. Our method can be used for various
data acquisitions and allows for uncertainty quantification. Some preliminary
results indicate its potential use for sequential deblurring and magnetic
resonance imaging.
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