Abstract
QCD-jets at the LHC are described by simple physics principles. We show how super-resolution generative networks can learn the underlying structures and use them to improve the resolution of jet images. We test this approach on massless QCD-jets and on fat top-jets and find that the network reproduces their main features even without training on pure samples. In addition, we show how a slim network architecture can be constructed once we have control of the full network performance.
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CITATION STYLE
Baldi, P., Blecher, L., Butter, A., Collado, J., Howard, J. N., Keilbach, F., … Whiteson, D. (2022). How to GAN Higher Jet Resolution. SciPost Physics, 13(3). https://doi.org/10.21468/SciPostPhys.13.3.064
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