Using a Conditional Generative Adversarial Network to Control the Statistical Characteristics of Generated Images for IACT Data Analysis
November 28, 2022 ยท Declared Dead ยท ๐ Proceedings of The 6th International Workshop on Deep Learning in Computational Physics โ PoS(DLCP2022)
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Authors
Julia Dubenskaya, Alexander Kryukov, Andrey Demichev, Stanislav Polyakov, Elizaveta Gres, Anna Vlaskina
arXiv ID
2211.15807
Category
astro-ph.IM
Cross-listed
astro-ph.HE,
cs.LG,
eess.IV
Citations
6
Venue
Proceedings of The 6th International Workshop on Deep Learning in Computational Physics โ PoS(DLCP2022)
Last Checked
1 month ago
Abstract
Generative adversarial networks are a promising tool for image generation in the astronomy domain. Of particular interest are conditional generative adversarial networks (cGANs), which allow you to divide images into several classes according to the value of some property of the image, and then specify the required class when generating new images. In the case of images from Imaging Atmospheric Cherenkov Telescopes (IACTs), an important property is the total brightness of all image pixels (image size), which is in direct correlation with the energy of primary particles. We used a cGAN technique to generate images similar to whose obtained in the TAIGA-IACT experiment. As a training set, we used a set of two-dimensional images generated using the TAIGA Monte Carlo simulation software. We artificiallly divided the training set into 10 classes, sorting images by size and defining the boundaries of the classes so that the same number of images fall into each class. These classes were used while training our network. The paper shows that for each class, the size distribution of the generated images is close to normal with the mean value located approximately in the middle of the corresponding class. We also show that for the generated images, the total image size distribution obtained by summing the distributions over all classes is close to the original distribution of the training set. The results obtained will be useful for more accurate generation of realistic synthetic images similar to the ones taken by IACTs.
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