Reconstructing boosted Higgs jets from event image segmentation

Abstract Based on the jet image approach, which treats the energy deposition in each calorimeter cell as the pixel intensity, the Convolutional neural network (CNN) method has been found to achieve a sizable improvement in jet tagging compared to the traditional jet substructure analysis. In this wo...

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Main Authors: Jinmian Li, Tianjun Li, Fang-Zhou Xu
Format: Article
Language:English
Published: SpringerOpen 2021-04-01
Series:Journal of High Energy Physics
Subjects:
Online Access:https://doi.org/10.1007/JHEP04(2021)156
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spelling doaj-62443373d776491a83da2484beed84662021-04-18T11:07:00ZengSpringerOpenJournal of High Energy Physics1029-84792021-04-012021412210.1007/JHEP04(2021)156Reconstructing boosted Higgs jets from event image segmentationJinmian Li0Tianjun Li1Fang-Zhou Xu2College of Physics, Sichuan UniversityCAS Key Laboratory of Theoretical Physics, Institute of Theoretical Physics, Chinese Academy of SciencesCAS Key Laboratory of Theoretical Physics, Institute of Theoretical Physics, Chinese Academy of SciencesAbstract Based on the jet image approach, which treats the energy deposition in each calorimeter cell as the pixel intensity, the Convolutional neural network (CNN) method has been found to achieve a sizable improvement in jet tagging compared to the traditional jet substructure analysis. In this work, the Mask R-CNN framework is adopted to reconstruct Higgs jets in collider-like events, with the effects of pileup contamination taken into account. This automatic jet reconstruction method achieves higher efficiency of Higgs jet detection and higher accuracy of Higgs boson four-momentum reconstruction than traditional jet clustering and jet substructure tagging methods. Moreover, the Mask R-CNN trained on events containing a single Higgs jet is capable of detecting one or more Higgs jets in events of several different processes, without apparent degradation in reconstruction efficiency and accuracy. The outputs of the network also serve as new handles for the t t ¯ $$ t\overline{t} $$ background suppression, complementing to traditional jet substructure variables.https://doi.org/10.1007/JHEP04(2021)156Jets
collection DOAJ
language English
format Article
sources DOAJ
author Jinmian Li
Tianjun Li
Fang-Zhou Xu
spellingShingle Jinmian Li
Tianjun Li
Fang-Zhou Xu
Reconstructing boosted Higgs jets from event image segmentation
Journal of High Energy Physics
Jets
author_facet Jinmian Li
Tianjun Li
Fang-Zhou Xu
author_sort Jinmian Li
title Reconstructing boosted Higgs jets from event image segmentation
title_short Reconstructing boosted Higgs jets from event image segmentation
title_full Reconstructing boosted Higgs jets from event image segmentation
title_fullStr Reconstructing boosted Higgs jets from event image segmentation
title_full_unstemmed Reconstructing boosted Higgs jets from event image segmentation
title_sort reconstructing boosted higgs jets from event image segmentation
publisher SpringerOpen
series Journal of High Energy Physics
issn 1029-8479
publishDate 2021-04-01
description Abstract Based on the jet image approach, which treats the energy deposition in each calorimeter cell as the pixel intensity, the Convolutional neural network (CNN) method has been found to achieve a sizable improvement in jet tagging compared to the traditional jet substructure analysis. In this work, the Mask R-CNN framework is adopted to reconstruct Higgs jets in collider-like events, with the effects of pileup contamination taken into account. This automatic jet reconstruction method achieves higher efficiency of Higgs jet detection and higher accuracy of Higgs boson four-momentum reconstruction than traditional jet clustering and jet substructure tagging methods. Moreover, the Mask R-CNN trained on events containing a single Higgs jet is capable of detecting one or more Higgs jets in events of several different processes, without apparent degradation in reconstruction efficiency and accuracy. The outputs of the network also serve as new handles for the t t ¯ $$ t\overline{t} $$ background suppression, complementing to traditional jet substructure variables.
topic Jets
url https://doi.org/10.1007/JHEP04(2021)156
work_keys_str_mv AT jinmianli reconstructingboostedhiggsjetsfromeventimagesegmentation
AT tianjunli reconstructingboostedhiggsjetsfromeventimagesegmentation
AT fangzhouxu reconstructingboostedhiggsjetsfromeventimagesegmentation
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