The R2D2 deep neural network series paradigm for fast precision imaging in radio astronomy
Amir Aghabiglou, Chung San Chu, Arwa Dabbech, Yves Wiaux

TL;DR
R2D2 is a novel deep learning series approach for fast, high-precision radio astronomy imaging that efficiently handles large data volumes and achieves high dynamic range reconstructions with few iterations.
Contribution
The paper introduces R2D2, a deep neural network series paradigm that combines residual imaging with iterative DNNs, enabling scalable, fast, and precise radio interferometric image reconstruction.
Findings
R2D2 achieves high dynamic range imaging up to 100000.
It requires only a few iterations for data residual cleaning.
Demonstrated effectiveness across various simulation settings.
Abstract
Radio-interferometric (RI) imaging entails solving high-resolution high-dynamic range inverse problems from large data volumes. Recent image reconstruction techniques grounded in optimization theory have demonstrated remarkable capability for imaging precision, well beyond CLEAN's capability. These range from advanced proximal algorithms propelled by handcrafted regularization operators, such as the SARA family, to hybrid plug-and-play (PnP) algorithms propelled by learned regularization denoisers, such as AIRI. Optimization and PnP structures are however highly iterative, which hinders their ability to handle the extreme data sizes expected from future instruments. To address this scalability challenge, we introduce a novel deep learning approach, dubbed "Residual-to-Residual DNN series for high-Dynamic range imaging". R2D2's reconstruction is formed as a series of residual images,…
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Taxonomy
TopicsRadio Astronomy Observations and Technology · Computational Physics and Python Applications
MethodsLib · PnP · Recurrent Replay Distributed DQN · SPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
