Bayesian Multiband Imaging of SN1987A in the Large Magellanic Cloud with SRG/eROSITA
Authors/Creators
Description
The eROSITA Early Data Release (EDR) and eROSITA All-Sky Survey (eRASS1) data have already revealed a remarkable number of undiscovered X-ray sources. Using Bayesian inference and generative modeling techniques for X-ray imaging, we aim to increase the sensitivity and scientific value of these observations by denoising, deconvolving, and decomposing the X-ray sky. Leveraging information field theory, we can exploit the spatial and spectral correlation structures of the different physical components of the sky with non-parametric priors to enhance the image reconstruction. By incorporating instrumental effects into the forward model, we develop a comprehensive Bayesian imaging algorithm for eROSITA pointing observations. Finally, we apply the developed algorithm to EDR data of the LMC SN1987A, fusing data sets from observations made by five different telescope modules. The final result is a denoised, deconvolved, and decomposed view of the LMC, which enables the analysis of its fine-scale structures, the identification of point sources in this region, and enhanced calibration for future work.
Files
Files
(4.6 GB)
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md5:25b2e021c9defd984e18b19b03dc516d
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md5:1fcfd37ff596b52f97f1c82868c5d831
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758.4 MB | Download |
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md5:b9848e14b2605337a930f92783e36793
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758.4 MB | Download |