Title of article :
Double-Star Detection Using Convolutional Neural Network in Atmospheric Turbulence
Author/Authors :
Bakhtiar Shohani ، Jafar Department of Physics - University of Isfahan , Hajimahmoodzadeh ، Morteza Quantum Optics Group, Department of Physics - University of Isfahan , Fallah ، Hamidreza Department of Physics - University of Isfahan
From page :
121
To page :
130
Abstract :
In this paper, we investigate the usage of machine learning in the detection and recognition of double stars. To do this, numerous images including one star and double stars are simulated. Then, 100 terms of Zernike expansion with random coefficients are considered as aberrations to impose on the aforementioned images. Also, a telescope with a specific aperture is simulated. In this work, two kinds of intensity are used, one is in-focus and the other is out-of-focus of the telescope. After these simulations, a convolutional neural network (CNN) is configured and designed and its input is simulated intensity patterns. After learning the network, we could recognize double stars at severe turbulence without needing phase correction with a very high accuracy level of more than 98%.
Keywords :
Aberration , Turbulence , Double Stars , Convolutional Neural Network , Machine Learning.
Journal title :
International Journal of Optics and Photonics (IJOP)
Journal title :
International Journal of Optics and Photonics (IJOP)
Record number :
2740309
Link To Document :
بازگشت