17–19 Jun 2020
America/Chicago timezone

Sparse Segmentation for Particle ID in ProtoDUNE

19 Jun 2020, 14:00
15m

Speaker

Carlos s Sarasty Segura (University of Cincinnati)

Description

This talk presents the application of sparse convolutional neural networks in three dimensions in the ProtoDUNE Liquid Argon Time Projection Chamber (LArTPC) detector, building on previous applications of the technique in other LArTPCs. Sparse convolutions allow for computationally efficient processing of very large and high-resolution three-dimensional images, making them a natural fit for fine-grained particle detectors. The use of segmentation techniques allows for particle ID to be performed on individual 3D hits, without the need to produce higher-level objects. This poster will discuss input production and network architecture, present training and inference benchmarking on ProtoDUNE simulation, and describe techniques for defining ground truth using the underlying simulation. Particle identification accuracies are presented for a range of particle classes.

Primary author

Carlos s Sarasty Segura (University of Cincinnati)

Presentation materials