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Machine Learning for Mini-EUSO Telescope Data Analysis

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arxiv 2308.14948 v1 pith:F5UZHLQO submitted 2023-08-29 astro-ph.IM physics.comp-phphysics.space-ph

Machine Learning for Mini-EUSO Telescope Data Analysis

classification astro-ph.IM physics.comp-phphysics.space-ph
keywords classificationdatalearningmachinemini-eusonetworksneuralsignals
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Neural networks as well as other methods of machine learning (ML) are known to be highly efficient in different classification tasks, including classification of images and videos. Mini- EUSO is a wide-field-of-view imaging telescope that operates onboard the International Space Station since 2019 collecting data on miscellaneous processes that take place in the atmosphere of Earth in the UV range. Here we briefly present our results on the development of ML-based approaches for recognition and classification of track-like signals in the Mini-EUSO data, among them meteors, space debris and signals the light curves and kinematics of which are similar to those expected from extensive air showers generated by ultra-high-energy cosmic rays. We show that even simple neural networks demonstrate impressive performance in solving these tasks.

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