Hierarchical Interferometric Bayesian Imaging
Paul Tiede, William Moses, Valentin Churavy, Michael D. Johnson, Dominic Pesce, Lindy Blackburn, Peter Galison

TL;DR
Hierarchical Interferometric Bayesian Imaging (HIBI) introduces a Bayesian framework for VLBI image reconstruction that quantifies uncertainty, incorporates instrumental effects, and improves physical parameter estimation, demonstrated on synthetic and real data including EHT observations.
Contribution
HIBI presents a hierarchical Bayesian approach for VLBI imaging that enables uncertainty quantification and simultaneous calibration, enhancing image reconstruction and physical parameter inference.
Findings
Accurately measures black hole shadow features like ring width.
Effectively recovers diverse image structures from synthetic and real data.
Quantifies uncertainties in physical parameters such as shadow size.
Abstract
Very long baseline interferometry (VLBI) achieves the highest angular resolution in astronomy. VLBI measures corrupted Fourier components, known as visibilities. Reconstructing on-sky images from these visibilities is a challenging inverse problem, particularly for sparse arrays such as the Event Horizon Telescope (EHT) and the Very Long Baseline Array (VLBA), where incomplete sampling and severe calibration errors introduce significant uncertainty in the image. To help guide convergence and control the uncertainty in image reconstructions, regularization on the space of images is utilized, such as enforcing smoothness or similarity to a fiducial image. Coupled with this regularization is the introduction of a new set of parameters that modulate its strength. We present a hierarchical Bayesian imaging approach (Hierarchical Interferometric Bayesian Imaging, HIBI) that enables the…
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Taxonomy
TopicsRadio Astronomy Observations and Technology · Galaxies: Formation, Evolution, Phenomena · Astrophysics and Cosmic Phenomena
