[ascl:1805.009]
STARBLADE: STar and Artefact Removal with a Bayesian Lightweight Algorithm from Diffuse Emission
STARBLADE (STar and Artefact Removal with a Bayesian Lightweight Algorithm from Diffuse Emission) separates superimposed point-like sources from a diffuse background by imposing physically motivated models as prior knowledge. The algorithm can also be used on noisy and convolved data, though performing a proper reconstruction including a deconvolution prior to the application of the algorithm is advised; the algorithm could also be used within a denoising imaging method. STARBLADE learns the correlation structure of the diffuse emission and takes it into account to determine the occurrence and strength of a superimposed point source.
- Code site:
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https://gitlab.mpcdf.mpg.de/ift/starblade
- Used in:
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https://ui.adsabs.harvard.edu/abs/2019AnP...53100127E
- Described in:
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https://ui.adsabs.harvard.edu/abs/2018arXiv180405591K
- Bibcode:
- 2018ascl.soft05009K