2021
DOI: 10.1088/1748-0221/16/12/p12035
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Segmentation of EM showers for neutrino experiments with deep graph neural networks

Abstract: We introduce a first-ever algorithm for the reconstruction of multiple showers from the data collected with electromagnetic (EM) sampling calorimeters. Such detectors are widely used in High Energy Physics to measure the energy and kinematics of in-going particles. In this work, we consider the case when many electrons pass through an Emulsion Cloud Chamber (ECC) brick, initiating electron-induced electromagnetic showers, which can be the case with long exposure times or large input particle flu… Show more

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References 39 publications
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