Naslov: | Investigating the VHE gamma-ray sources using deep neural networks |
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Avtorji: | ID Vodeb, Veronika (Avtor) ID Bhattacharyya, Saptashwa (Avtor) ID Principe, G. (Avtor) ID Zaharijas, Gabrijela (Avtor) ID Austri, R. (Avtor) ID Stoppa, F. (Avtor) ID Caron, S. (Avtor) ID Malyshev, D. (Avtor) |
Datoteke: | ICRC2023_599.pdf (962,45 KB) MD5: 4BB15D6D19CECEA732CA9C8BEB5BB46F
https://pos.sissa.it/444/599/
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Jezik: | Angleški jezik |
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Vrsta gradiva: | Neznano |
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Tipologija: | 1.08 - Objavljeni znanstveni prispevek na konferenci |
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Organizacija: | UNG - Univerza v Novi Gorici
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Opis: | The upcoming Cherenkov Telescope Array (CTA) will dramatically improve the point-source sensitivity compared to the current Imaging Atmospheric Cherenkov Telescopes (IACTs). One of the key science projects of CTA will be a survey of the whole Galactic plane (GPS) using both southern and northern observatories, specifically focusing on the inner galactic region. We extend a deep learning-based image segmentation software pipeline (autosource-id) developed on Fermi-LAT data to detect and classify extended sources for the simulated CTA GPS. Using updated instrument response functions for CTA (Prod5), we test this pipeline on simulated gamma-ray sources lying in the inner galactic region (specifically 0∘<l<20∘, |b|<4∘) for energies ranging from 30 GeV to 100 TeV.
Dividing the source extensions ranging from 0.03∘ to 1∘ in three different classes, we find that using a simple and light convolutional neural network achieves 97% global accuracy in separating the extended sources from the point-like sources. The neural net architecture including other data pre-processing codes is available online. |
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Ključne besede: | deep neural network, cosmic-rays, CTA, classification |
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Datum objave: | 01.01.2023 |
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Leto izida: | 2023 |
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Št. strani: | str. 1-8 |
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Številčenje: | 599, 444 |
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PID: | 20.500.12556/RUNG-8374-5750e5df-2ff1-1e60-8d2d-91b5f0da6158 |
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COBISS.SI-ID: | 162825987 |
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UDK: | 539.1 |
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ISSN pri članku: | 1824-8039 |
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DOI: | https://doi.org/10.22323/1.444.0599 |
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NUK URN: | URN:SI:UNG:REP:WWF6IUJB |
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Datum objave v RUNG: | 31.08.2023 |
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Število ogledov: | 2297 |
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Število prenosov: | 7 |
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