Cosmic ray muon clustering for the MicroBooNE liquid argon time projection chamber using sMask-RCNN
Identificadores
URI: https://hdl.handle.net/10481/79370Metadatos
Mostrar el registro completo del ítemEditorial
Institute of Physics
Materia
Particle identification methods Pattern recognition Cluster finding Calibration and fitting methods Time projection chambers
Fecha
2022-05-23Referencia bibliográfica
Published version: P. Abratenko... [et al.]. 2022 JINST 17 P09015. [https://doi.org/10.1088/1748-0221/17/09/P09015]
Patrocinador
Fermi Research Alliance, LLC (FRA) DE-AC02-07CH11359; United States Department of Energy (DOE) National Science Foundation (NSF); Swiss National Science Foundation (SNSF); European Commission; UK Research & Innovation (UKRI); Science & Technology Facilities Council (STFC); Royal Society of London; European Commission; Albert Einstein Center for Fundamental Physics, Bern, SwitzerlandResumen
In this article, we describe a modified implementation of Mask Region-based Convolutional
Neural Networks (Mask-RCNN) for cosmic ray muon clustering in a liquid argon TPC and
applied to MicroBooNE neutrino data. Our implementation of this network, called sMask-RCNN,
uses sparse submanifold convolutions to increase processing speed on sparse datasets, and is
compared to the original dense version in several metrics. The networks are trained to use wire
readout images from the MicroBooNE liquid argon time projection chamber as input and produce
individually labeled particle interactions within the image. These outputs are identified as either
cosmic ray muon or electron neutrino interactions. We find that sMask-RCNN has an average pixel
clustering efficiency of 85.9% compared to the dense network’s average pixel clustering efficiency
of 89.1%. We demonstrate the ability of sMask-RCNN used in conjunction with MicroBooNE’s
state-of-the-art Wire-Cell cosmic tagger to veto events containing only cosmic ray muons. The
addition of sMask-RCNN to the Wire-Cell cosmic tagger removes 70% of the remaining cosmic
ray muon background events at the same electron neutrino event signal efficiency. This event veto
can provide 99.7% rejection of cosmic ray-only background events while maintaining an electron
neutrino event-level signal efficiency of 80.1%. In addition to cosmic ray muon identification,
sMask-RCNN could be used to extract features and identify different particle interaction types in
other 3D-tracking detectors.





