Computer Vision and Pattern Recognition · Computer Science
Turbulence Strength $C_n^2$ Estimation from Video using Physics-based Deep Learning
Ripon Kumar Saha, Esen Salcin, Jihoo Kim, Joseph Smith +1
2024-08-30
Atmospheric and Oceanic Physics · Physics
{\Pi}-ML: A dimensional analysis-based machine learning parameterization of optical turbulence in the atmospheric surface layer
Maximilian Pierzyna, Rudolf Saathof, Sukanta Basu
2023-08-11
Instrumentation and Methods for Astrophysics · Physics
Time-domain deep learning filtering of structured atmospheric noise for ground-based millimeter astronomy
Alejandra Rocha-Solache, Iván Rodríguez-Montoya, David Sánchez-Argüelles, Itziar Aretxaga
2022-05-18
Atmospheric and Oceanic Physics · Physics
First on-sky results of the CO-SLIDAR Cn2 profiler
Juliette Voyez, Clélia Robert, Jean-Marc Conan, Laurent M. Mugnier +2
2015-06-18
Instrumentation and Methods for Astrophysics · Physics
Optical turbulence vertical distribution with standard and high resolution at Mt. Graham
E. Masciadri, J. Stoesz, S. Hagelin, F. Lascaux
2010-11-29
Instrumentation and Methods for Astrophysics · Physics
Cn2 and wind profiler method to quantify the frozen flow decay using wide-field laser guide stars adaptive optics
Andrés Guesalaga, Benoit Neichel, Angela Cortes, Clémentine Béchet +1
2014-02-28
Atmospheric and Oceanic Physics · Physics
OTProf: estimating high-resolution profiles of optical turbulence ($C_n^2$) from reanalysis using deep learning
Maximilian Pierzyna, Sukanta Basu, Rudolf Saathof
2026-04-13
Instrumentation and Methods for Astrophysics · Physics
Accurate measurement of Cn2 profile with Shack-Hartmann data
Juliette Voyez, Clélia Robert, Vincent Michau, Jean Marc Conan +1
2015-06-05
Instrumentation and Methods for Astrophysics · Physics
Stereo-SCIDAR: Optical turbulence profiling with high sensitivity using a modified SCIDAR instrument
H. W. Shepherd, J. Osborn, R. W. Wilson, T. Butterley +3
2014-01-07
Image and Video Processing · Electrical Eng. & Systems
Single Frame Atmospheric Turbulence Mitigation: A Benchmark Study and A New Physics-Inspired Transformer Model
Zhiyuan Mao, Ajay Jaiswal, Zhangyang Wang, Stanley H. Chan
2022-07-26
Image and Video Processing · Electrical Eng. & Systems
Deep neural networks for efficient phase demodulation in wavelength shifting interferometry
Jacob Black, Shichao Chen, Joseph G. Thomas, Yizheng Zhu
2020-08-26
Emerging Technologies · Computer Science
Freely scalable and reconfigurable optical hardware for deep learning
Liane Bernstein, Alexander Sludds, Ryan Hamerly, Vivienne Sze +2
2020-06-25
Image and Video Processing · Electrical Eng. & Systems
Deep learning enabled superfast and accurate M^2 evaluation for fiber beams
Yi An, Jun Li, Liangjin Huang, Jinyong Leng +2
2019-07-16
Machine Learning · Computer Science
A Deep Learning Approach To Estimation Using Measurements Received Over a Network
Shivangi Agarwal, Sanjit K. Kaul, Saket Anand, P. B. Sujit
2022-09-13
Atmospheric and Oceanic Physics · Physics
A Deep Learning Model of Lightning Stroke Density
Randall Jones, Joel A. Thornton, Chris J. Wright, Robert Holzworth
2025-09-15
Machine Learning · Computer Science
An Estimator for the Sensitivity to Perturbations of Deep Neural Networks
Naman Maheshwari, Nicholas Malaya, Scott Moe, Jaydeep P. Kulkarni +1
2023-07-25