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Point Cloud Deep Learning Methods for Pion Reconstruction in the ATLAS Detector

The reconstruction and calibration of hadronic final states in the ATLAS detector at the LHC present complex experimental challenges. For isolated pions in particular, classifying $\pi^0$ versus $\pi^{\pm}$ and calibrating pion energy deposits in the ATLAS calorimeters are key steps in the hadronic...

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Autor principal: Portillo Quintero, Dilia Maria
Lenguaje:eng
Publicado: 2022
Materias:
Acceso en línea:https://dx.doi.org/10.22323/1.414.1076
http://cds.cern.ch/record/2839615
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author Portillo Quintero, Dilia Maria
author_facet Portillo Quintero, Dilia Maria
author_sort Portillo Quintero, Dilia Maria
collection CERN
description The reconstruction and calibration of hadronic final states in the ATLAS detector at the LHC present complex experimental challenges. For isolated pions in particular, classifying $\pi^0$ versus $\pi^{\pm}$ and calibrating pion energy deposits in the ATLAS calorimeters are key steps in the hadronic reconstruction process. The baseline methods for local hadronic calibration were optimized early in the lifetime of the ATLAS experiment. This publication presents a significant improvement over existing techniques using machine learning methods that do not require the input variables to be projected onto a fixed and regular grid. Instead, Deep Sets, and Graph Neural Network architectures are used to process calorimeter clusters and particle tracks as point clouds, or a collection of data points representing a three-dimensional object in space. This note demonstrates the performance of these new approaches as an important step towards a low-level hadronic reconstruction scheme that fully takes advantage of deep learning to improve its performance.
id cern-2839615
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2022
record_format invenio
spelling cern-28396152023-08-03T20:41:53Zdoi:10.22323/1.414.1076http://cds.cern.ch/record/2839615engPortillo Quintero, Dilia MariaPoint Cloud Deep Learning Methods for Pion Reconstruction in the ATLAS DetectorParticle Physics - ExperimentThe reconstruction and calibration of hadronic final states in the ATLAS detector at the LHC present complex experimental challenges. For isolated pions in particular, classifying $\pi^0$ versus $\pi^{\pm}$ and calibrating pion energy deposits in the ATLAS calorimeters are key steps in the hadronic reconstruction process. The baseline methods for local hadronic calibration were optimized early in the lifetime of the ATLAS experiment. This publication presents a significant improvement over existing techniques using machine learning methods that do not require the input variables to be projected onto a fixed and regular grid. Instead, Deep Sets, and Graph Neural Network architectures are used to process calorimeter clusters and particle tracks as point clouds, or a collection of data points representing a three-dimensional object in space. This note demonstrates the performance of these new approaches as an important step towards a low-level hadronic reconstruction scheme that fully takes advantage of deep learning to improve its performance.ATL-PHYS-PROC-2022-105oai:cds.cern.ch:28396152022-11-06
spellingShingle Particle Physics - Experiment
Portillo Quintero, Dilia Maria
Point Cloud Deep Learning Methods for Pion Reconstruction in the ATLAS Detector
title Point Cloud Deep Learning Methods for Pion Reconstruction in the ATLAS Detector
title_full Point Cloud Deep Learning Methods for Pion Reconstruction in the ATLAS Detector
title_fullStr Point Cloud Deep Learning Methods for Pion Reconstruction in the ATLAS Detector
title_full_unstemmed Point Cloud Deep Learning Methods for Pion Reconstruction in the ATLAS Detector
title_short Point Cloud Deep Learning Methods for Pion Reconstruction in the ATLAS Detector
title_sort point cloud deep learning methods for pion reconstruction in the atlas detector
topic Particle Physics - Experiment
url https://dx.doi.org/10.22323/1.414.1076
http://cds.cern.ch/record/2839615
work_keys_str_mv AT portilloquinterodiliamaria pointclouddeeplearningmethodsforpionreconstructionintheatlasdetector