autosourceID project:
Automatized Identification
of Astrophysical Objects




autosourceID: About



AutoSourceID is a framework for quickly locating and identifying sources in astronomical images.

AutoSourceID currently works for gamma rays and optical images and consists of a chain of neural networks and other tools to rapidly create a catalogue of sources from an image including uncertainties. The algorithm can be split into the following steps: mask generation, source localization, and finally feature extraction and classification.

Contributors:
Fiorenzo Stoppa, Paul Vreeswijk, Steven Bloemen, Saptashwa Bhattacharyya, Sascha Caron, Guðlaugur Jóhannesson, Roberto Ruiz de Austri, Chris van den Oetelaar, Gabrijela Zaharijas, Paul. J. Groot, Eric Cator, Gijs Nelemans, Boris Panes, Christopher Eckner, Luc Hendriks, Klaas Dijkstra, Rodney Nicolaas

Please let us know if you like to join / contribute.
Downloads

autosourceID:Downloads

download
AutoSourceID's gamma ray datasets can be found at this Github link
AutoSourceID-Light's datasets can be found at this
Zenodo link
CODE

autosourceID: code


AutoSourceID's code can be found at this
Github link
AutoSourceID-Light's code can be found at this
Github link
Publications

autosourceID: publications


  • Identification of point sources in gamma rays using U-shaped convolutional neural networks and a data challenge (2021)
  • AutoSourceID-Light. Fast Optical Source Localization via U-Net and Laplacian of Gaussian (2022)
  • AutoSourceID-FeatureExtractor. Optical image analysis using a two-step mean variance estimation network for feature estimation and uncertainty characterisation (2023)
  • AutoSourceID-Classifier. Star-Galaxy Classification using a Convolutional Neural Network with Spatial Information (2023)