Electromagnetic shower reconstruction and energy validation with Michel electrons and π0 samples for the deep-learning-based analyses in MicroBooNE
This article presents the reconstruction of the electromagnetic activity from electrons and photons (showers) used in the MicroBooNE deep learning-based low energy electron search. The reconstruction algorithm uses a combination of traditional and deep learning-based techniques to estimate shower en...
Main Authors: | Abratenko, P, An, R, Anthony, J, Barr, G, Duffy, K, Tagg, N, Van De Pontseele, W |
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Other Authors: | The MicroBooNE Collaboration |
Format: | Journal article |
Language: | English |
Published: |
IOP Publishing
2021
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