A Fourier dimensionality reduction model for big data interferometric imaging
S. Vijay Kartik, Rafael E. Carrillo, Jean-Philippe Thiran, Yves Wiaux

TL;DR
This paper introduces a Fourier-based dimensionality reduction technique for radio interferometric imaging that reduces data size while preserving essential properties, enabling efficient convex optimization-based image reconstruction for big data scenarios.
Contribution
It proposes a novel Fourier-based data embedding method that preserves measurement properties and noise characteristics, improving scalability of interferometric imaging algorithms.
Findings
Reduces data dimensionality below image size
Preserves measurement null space and sampling properties
Enables fast, accurate image reconstruction with convex optimization
Abstract
Data dimensionality reduction in radio interferometry can provide savings of computational resources for image reconstruction through reduced memory footprints and lighter computations per iteration, which is important for the scalability of imaging methods to the big data setting of the next-generation telescopes. This article sheds new light on dimensionality reduction from the perspective of compressed sensing theory and studies its interplay with imaging algorithms designed in the context of convex optimization. We propose a post-gridding linear data embedding to the space spanned by the left singular vectors of the measurement operator, providing a dimensionality reduction below image size. This embedding preserves the null space of the measurement operator and hence also its sampling properties as per compressed sensing theory. We show that this can be approximated by first…
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