Image-Based Jet Analysis
- URL: http://arxiv.org/abs/2012.09719v2
- Date: Fri, 18 Dec 2020 14:34:34 GMT
- Title: Image-Based Jet Analysis
- Authors: Michael Kagan
- Abstract summary: Image-based jet analysis is built upon the jet image representation of jets that enables a direct connection between high energy physics and computer vision and deep learning.
We review the methods to understand what these models have learned and what is their sensitivity to uncertainties.
Beyond jet classification, several other applications of jet image based techniques, including energy estimation, pileup noise reduction, data generation, and anomaly detection are discussed.
- Score: 2.5382095320488665
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Image-based jet analysis is built upon the jet image representation of jets
that enables a direct connection between high energy physics and the fields of
computer vision and deep learning. Through this connection, a wide array of new
jet analysis techniques have emerged. In this text, we survey jet image based
classification models, built primarily on the use of convolutional neural
networks, examine the methods to understand what these models have learned and
what is their sensitivity to uncertainties, and review the recent successes in
moving these models from phenomenological studies to real world application on
experiments at the LHC. Beyond jet classification, several other applications
of jet image based techniques, including energy estimation, pileup noise
reduction, data generation, and anomaly detection, are discussed.
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