Multi-scale and Multi-directional VLBI Imaging with CLEAN
Hendrik M\"uller, Andrei Lobanov

TL;DR
This paper introduces DoB-CLEAN, a novel multi-scale, multi-directional wavelet-based deconvolution method for VLBI imaging that improves resolution and reduces artifacts compared to traditional CLEAN algorithms.
Contribution
The paper develops and benchmarks a new multi-scale CLEAN variant using wavelet transforms, enhancing image quality and resolution in VLBI imaging.
Findings
DoB-CLEAN achieves super-resolution over CLEAN.
It remedies CLEAN's regularization issues.
It maintains physical interpretability of images.
Abstract
Very long baseline interferometry (VLBI) is a radio-astronomical technique in which the correlated signal from various baselines is combined into an image of highest angular resolution. Due to sparsity of the measurements, this imaging procedure constitutes an ill-posed inverse problem. For decades the CLEAN algorithm was the standard choice in VLBI studies, although having some serious disadvantages and pathologies that are challenged by the requirements of modern frontline VLBI applications. We develop a novel multi-scale CLEAN deconvolution method (DoB-CLEAN) based on continuous wavelet transforms that address several pathologies in CLEAN imaging. We benchmark this novel algorithm against CLEAN reconstructions on synthetic data and reanalyze BL Lac observations of RadioAstron with DoB-CLEAN. DoB-CLEAN approaches the image by multi-scalar and multi-directional wavelet dictionaries.…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques · Ultrasound Imaging and Elastography · Image and Signal Denoising Methods
