Deep Learning-Based Super-Resolution and De-Noising for XMM-Newton Images.
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Updated
Oct 22, 2024 - Python
Deep Learning-Based Super-Resolution and De-Noising for XMM-Newton Images.
pySAS is a python wrapper for the Science Analysis Software (SAS) used for analyzing XMM-Newton data. This repository is maintained by the XMM-Newton Guest Observer Facility (GOF) at Goddard Space Flight Center for testing new pySAS functionality.
Simulation code for XMM-Newton EPIC-pn data using SIXTE and SIMPUT, designed to create training data for deep learning based super-resolution and de-noising.
Python pipeline designed to obtain energy resolved pulse profiles of X-ray pulsar with XMM-Newton and NuSTAR observations.
Scripts intended to assist in XMM-Newton data reduction and analysis
NASA Archive Installer
Implementation of YOLOv8 (ultralytics) in the analysis of XMM-Newton astronomical images
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