Preprocessing Solar Images while Preserving their Latent Structure
Nathan M Stein, David A van Dyk, and Vinay L Kashyap

TL;DR
This paper introduces a segmentation framework for solar images that reduces data volume and preserves thermal information, enabling more efficient analysis by avoiding complex inverse problems.
Contribution
The authors develop a novel image segmentation method using dissimilarity measures that simplifies thermal property recovery in solar images, significantly reducing computational costs.
Findings
Segmentation reduces data volume by a factor of 10^6.
Dissimilarity measures effectively recover thermal property clusters.
Method improves computational efficiency for solar image analysis.
Abstract
Telescopes such as the Atmospheric Imaging Assembly aboard the Solar Dynamics Observatory, a NASA satellite, collect massive streams of high resolution images of the Sun through multiple wavelength filters. Reconstructing pixel-by-pixel thermal properties based on these images can be framed as an ill-posed inverse problem with Poisson noise, but this reconstruction is computationally expensive and there is disagreement among researchers about what regularization or prior assumptions are most appropriate. This article presents an image segmentation framework for preprocessing such images in order to reduce the data volume while preserving as much thermal information as possible for later downstream analyses. The resulting segmented images reflect thermal properties but do not depend on solving the ill-posed inverse problem. This allows users to avoid the Poisson inverse problem…
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