MADNESS Deblender: Maximum A posteriori with Deep NEural networks for Source Separation
Biswajit Biswas, Eric Aubourg, Alexandre Boucaud, Axel Guinot, Junpeng Lao, C\'ecile Roucelle, and the LSST Dark Energy Science Collaboration

TL;DR
MADNESS is a deep learning-based deblender for astronomical images that effectively separates overlapping galaxies, outperforming existing methods like scarlet in accuracy and reliability for LSST survey data.
Contribution
This paper introduces MADNESS, a novel neural network approach combining variational auto-encoders and normalizing flows for improved galaxy deblending in large-scale surveys.
Findings
MADNESS outperforms scarlet in flux residuals and similarity metrics.
MADNESS achieves approximately 29% lower flux residuals in the LSST r-band.
The method effectively models complex galaxy morphologies using deep neural networks.
Abstract
Due to the unprecedented depth of the upcoming ground-based Legacy Survey of Space and Time (LSST) at the Vera C. Rubin Observatory, approximately two-thirds of the galaxies are likely to be affected by blending - the overlap of physically separated galaxies in images. Thus, extracting reliable shapes and photometry from individual objects will be limited by our ability to correct blending and control any residual systematic effect. Deblending algorithms tackle this issue by reconstructing the isolated components from a blended scene, but the most commonly used algorithms often fail to model complex realistic galaxy morphologies. As part of an effort to address this major challenge, we present MADNESS, which takes a data-driven approach and combines pixel-level multi-band information to learn complex priors for obtaining the maximum a posteriori solution of deblending. MADNESS is…
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Taxonomy
TopicsSpeech and Audio Processing · Speech Recognition and Synthesis · Underwater Acoustics Research
