DeepRICH: Learning Deeply Cherenkov Detectors
November 26, 2019 Β· Declared Dead Β· π Machine Learning: Science and Technology
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Authors
Cristiano Fanelli, Jary Pomponi
arXiv ID
1911.11717
Category
physics.data-an
Cross-listed
cs.LG,
hep-ex,
nucl-ex,
physics.ins-det
Citations
26
Venue
Machine Learning: Science and Technology
Last Checked
3 months ago
Abstract
Imaging Cherenkov detectors are largely used for particle identification (PID) in nuclear and particle physics experiments, where developing fast reconstruction algorithms is becoming of paramount importance to allow for near real time calibration and data quality control, as well as to speed up offline analysis of large amount of data. In this paper we present DeepRICH, a novel deep learning algorithm for fast reconstruction which can be applied to different imaging Cherenkov detectors. The core of our architecture is a generative model which leverages on a custom Variational Auto-encoder (VAE) combined to Maximum Mean Discrepancy (MMD), with a Convolutional Neural Network (CNN) extracting features from the space of the latent variables for classification. A thorough comparison with the simulation/reconstruction package FastDIRC is discussed in the text. DeepRICH has the advantage to bypass low-level details needed to build a likelihood, allowing for a sensitive improvement in computation time at potentially the same reconstruction performance of other established reconstruction algorithms. In the conclusions, we address the implications and potentialities of this work, discussing possible future extensions and generalization.
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