Stereograph: Stereoscopic event reconstruction using graph neural networks applied to CTAO
Hana Ali Messaoud, Thomas Vuillaume, Tom Fran\c{c}ois

TL;DR
This paper introduces a novel graph neural network approach for stereoscopic event reconstruction in the CTAO gamma-ray observatory, demonstrating improved accuracy over traditional methods using simulated data.
Contribution
It proposes using Graph Neural Networks to enhance event reconstruction by effectively combining observations from multiple telescopes in CTAO.
Findings
GNNs outperform random forests in energy and angular resolution
GNNs improve gamma-proton separation accuracy
Enhanced stereoscopic reconstruction quality
Abstract
The CTAO (Cherenkov Telescope Array Observatory) is an international observatory currently under construction. With more than sixty telescopes, it will eventually be the largest and most sensitive ground-based gamma-ray observatory. CTAO studies the high-energy universe by observing gamma rays emitted by violent phenomena (supernovae, black hole environments, etc.). These gamma rays produce an atmospheric shower when entering the atmosphere, which emits faint blue light, observed by CTAO's highly sensitive cameras. The event reconstruction consists of analyzing the images produced by the telescopes to retrieve the physical properties of the incident particle (mainly direction, energy, and type). A standard method for performing this reconstruction consists of combining traditional image parameter calculations with machine learning algorithms, such as random forests, to estimate the…
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