9–13 May 2022
CERN
Europe/Zurich timezone

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

13 May 2022, 15:10
25m
500/1-001 - Main Auditorium (CERN)

500/1-001 - Main Auditorium

CERN

400
Show room on map
Regular talk Workshop

Speaker

Mariel Pettee (Lawrence Berkeley National Lab. (US))

Description

Reconstructing the type and energy of isolated pions from the ATLAS calorimeters is a key step in the hadronic reconstruction. The baseline methods for local hadronic calibration were optimized early in the lifetime of the ATLAS experiment. Recently, image-based deep learning techniques demonstrated significant improvements over the performance over these traditional techniques. We present an extension of that work using point cloud methods that do not require calorimeter clusters or particle tracks to be projected onto a fixed and regular grid. Instead, transformer, deep sets, and graph neural network architectures are used to process calorimeter clusters and particle tracks as point clouds. We demonstrate the performance of these new approaches as an important step towards a full deep learning-based low-level hadronic reconstruction.

Primary authors

Aaron Angerami (Lawrence Livermore Nat. Laboratory (US)) Russell Bate (University of British Columbia (CA)) Wojtek Fedorko (TRIUMF) Ming Fong (University of California, Berkeley) Sanmay Ganguly (University of Tokyo (JP)) Piyush Karande Alison Lister (University of British Columbia (CA)) Ben Nachman (Lawrence Berkeley National Lab. (US)) Jan Tuzlic Offermann (University of Chicago (US)) Mariel Pettee (Lawrence Berkeley National Lab. (US)) Dilia Maria Portillo Quintero (TRIUMF (CA)) Maximilian J Swiatlowski (TRIUMF (CA))

Presentation materials