MIU2Net: weak-lensing mass inversion using deep learning with nested U-structures
Han W.G., An Zhao, Xinyue Chen, Ran Li, Rui Li, Xiangkun Liu, Zhao Chen, Yu Yu

TL;DR
MIU2Net is a deep learning framework that accurately reconstructs dark matter mass distributions from weak lensing data, outperforming traditional methods in fidelity and robustness for upcoming space surveys.
Contribution
Introduces MIU2Net, a novel U2-Net based deep learning approach with a custom loss function for improved mass inversion in weak lensing surveys.
Findings
Achieves 4% uncertainty in power spectrum up to l≈500.
Outperforms Wiener filtering and MCALens in accuracy.
Reduces RMSE by 5-38% compared to other methods.
Abstract
One of the primary goals of next-generation gravitational lensing surveys is to measure the large-scale distribution of dark matter, which requires accurate mass inversion to convert weak-lensing shear maps into convergence (kappa) fields. This work develops a mass inversion method tailored for upcoming space missions such as CSST and Euclid, aiming to recover both the mass distribution and the convergence power spectrum with high fidelity. We introduce MIU2Net, a versatile deep-learning framework for kappa-map reconstruction based on the U2-Net architecture. A new loss function is constructed to jointly estimate the convergence field and its frequency-domain energy distribution, effectively balancing optimal mean squared error and optimal power-spectrum recovery. The method incorporates realistic observational effects into shear fields, including shape noise, reduced shear, and complex…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Radio Astronomy Observations and Technology · Pulsars and Gravitational Waves Research
