Spatially Variant Point Spread Function Removal with Generative Modeling

Not scheduled
20m
TUM Hörsaal/lecture hall 1 (HS 1) (Garching)

TUM Hörsaal/lecture hall 1 (HS 1)

Garching

Technical University Munich (TUM) Boltzmannstraße 3, 85748 Garching

Speaker

Vincent Eberle (Max Planck Institute for Astrophysics, LMU Munich)

Description

When measuring photon counts from incoming sky fluxes, X-ray observatories imprint nuisance effects on the data that must be accurately removed. Some detector effects can be easily inverted, while others are not trivially invertible such as the point spread function and shot noise. Using information field theory and Bayes' theorem, we infer the posterior mean and uncertainty for the sky flux. This involves the use of prior knowledge encoded in a generative model and a precise and differentiable model of the instrument. The spatial variability of the point spread function as part of the instrument description degrades the resolution of the data as the off-axis angle increases. The approximation of the true instrument point spread function by an interpolated and patched convolution provides a fast and accurate representation as part of a numerical instrument model. By incorporating the spatial variability of the point spread function, far off-axis events can be reliably accounted for. This both allows to increase the signal-to-noise ratio and to cobine observations from different instruments. The developed reconstruction method is demonstrated on a series of observations.

Primary author

Vincent Eberle (Max Planck Institute for Astrophysics, LMU Munich)

Co-authors

Matteo Guardiani (Max Planck Institute for Astrophysics) Margret Westerkamp (Max Planck Institute for Astrophysics; Ludwig-Maximilians-Universität München) Philipp Frank (Max Planck Institute for Astrophysics) Torsten Ensslin (MPI for Astrophysics)

Presentation materials