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Fast Point Spread Function Modeling with Deep Learning
v1v2 (latest)

Fast Point Spread Function Modeling with Deep Learning

23 January 2018
J. Herbel
T. Kacprzak
A. Amara
Alexandre Réfrégier
Aurelien Lucchi
ArXiv (abs)PDFHTML

Papers citing "Fast Point Spread Function Modeling with Deep Learning"

6 / 6 papers shown
Point spread function modelling for astronomical telescopes: a review
  focused on weak gravitational lensing studies
Point spread function modelling for astronomical telescopes: a review focused on weak gravitational lensing studiesFrontiers in Astronomy and Space Sciences (Front. Astron. Space Sci.), 2023
T. Liaudat
Jean-Luc Starck
M. Kilbinger
230
15
0
12 Jun 2023
Optical Aberration Correction in Postprocessing using Imaging Simulation
Optical Aberration Correction in Postprocessing using Imaging SimulationACM Transactions on Graphics (TOG), 2021
Shiqi Chen
H. Feng
Dexin Pan
Zhi-hai Xu
Qi Li
Yue-ting Chen
213
52
0
10 May 2023
Spatially-Variant CNN-based Point Spread Function Estimation for Blind
  Deconvolution and Depth Estimation in Optical Microscopy
Spatially-Variant CNN-based Point Spread Function Estimation for Blind Deconvolution and Depth Estimation in Optical Microscopy
Adrian Shajkofci
M. Liebling
221
56
0
08 Oct 2020
Separating the EoR Signal with a Convolutional Denoising Autoencoder: A
  Deep-learning-based Method
Separating the EoR Signal with a Convolutional Denoising Autoencoder: A Deep-learning-based Method
Weitian Li
Haiguang Xu
Zhixian Ma
Ruimin Zhu
D. Hu
Zhenghao Zhu
Junhua Gu
C. Shan
Jie Zhu
Xiang-Ping Wu
246
29
0
25 Feb 2019
On the dissection of degenerate cosmologies with machine learning
On the dissection of degenerate cosmologies with machine learning
J. Merten
C. Giocoli
M. Baldi
M. Meneghetti
A. Peel
F. Lalande
Jean-Luc Starck
V. Pettorino
316
33
0
25 Oct 2018
Deriving star cluster parameters with convolutional neural networks. I.
  Age, mass, and size
Deriving star cluster parameters with convolutional neural networks. I. Age, mass, and sizeAstronomy & Astrophysics (A&A), 2018
J. Bialopetravivcius
D. Narbutis
V. Vansevivcius
230
11
0
19 Jul 2018
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