HEP-EXCVINS-DETAug 17, 2023

SR-GAN for SR-gamma: super resolution of photon calorimeter images at collider experiments

arXiv:2308.09025v25 citationsh-index: 75
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This addresses particle physics data analysis by enhancing calorimeter image resolution, though it is incremental as it applies existing SR-GAN methods to a new domain.

The researchers tackled super-resolution of photon calorimeter images at collider experiments using SR-GAN, achieving a 4× resolution increase that improved shower-shape reconstruction and photon identification, especially with small training samples.

We study single-image super-resolution algorithms for photons at collider experiments based on generative adversarial networks. We treat the energy depositions of simulated electromagnetic showers of photons and neutral-pion decays in a toy electromagnetic calorimeter as 2D images and we train super-resolution networks to generate images with an artificially increased resolution by a factor of four in each dimension. The generated images are able to reproduce features of the electromagnetic showers that are not obvious from the images at nominal resolution. Using the artificially-enhanced images for the reconstruction of shower-shape variables and of the position of the shower center results in significant improvements. We additionally investigate the utilization of the generated images as a pre-processing step for deep-learning photon-identification algorithms and observe improvements in the case of training samples of small size.

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