Proceedings of 36th International Cosmic Ray Conference — PoS(ICRC2019) 2019
DOI: 10.22323/1.358.0752
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CTLearn: Deep Learning for Gamma-ray Astronomy

Abstract: CTLearn is a new Python package under development that uses the deep learning technique to analyze data from imaging atmospheric Cherenkov telescope (IACT) arrays. IACTs use the Cherenkov light emitted from air showers, initiated by very-high-energy gamma rays, to form an image of the longitudinal development of the air shower on the camera plane. The spatial, temporal, and calorimetric information of the originating high-energy particle is then recorded electronically. The sensitivity of IACTs to astrophysica… Show more

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Cited by 5 publications
(2 citation statements)
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References 9 publications
(13 reference statements)
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“…Using CTLearn, a freely available Python programme that use deep learning to analyse data from IACTs, the team created a CNN-RNN network and discovered inadequate evidence that ordering telescope pictures by cumulative magnitude improves background rejection performance. Nieto et al [24] employed CTLearn, a python package that uses deep learning in order to analyse data from IACT arrays.…”
Section: Related Workmentioning
confidence: 99%
“…Using CTLearn, a freely available Python programme that use deep learning to analyse data from IACTs, the team created a CNN-RNN network and discovered inadequate evidence that ordering telescope pictures by cumulative magnitude improves background rejection performance. Nieto et al [24] employed CTLearn, a python package that uses deep learning in order to analyse data from IACT arrays.…”
Section: Related Workmentioning
confidence: 99%
“…CTLearn-TRN Developed within the CTLearn framework [4], this implementation also uses single-task approach to tackle the event reconstruction. The network is based on an architecture called Thin-ResNet (TRN) of 34 layers.…”
Section: Pos(icrc2021)771mentioning
confidence: 99%