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Point Cloud CycleGAN

POSTER

Abstract

We develop a graph convolutional CycleGAN model that translates between simulated and experimental event representations in the Active-Target Time Projection Chamber. The model simultaneously learns two taks: 1) modeling detector response and noise behavior and 2) removing noise and completing tracks for data cleaning. We modified an existing TreeGAN architecture to create a CycleGAN which can be used for point clouds. The point cloud CycleGAN can be used to convert simulated data to experimental data and vice versa. Through this transformation noise can easily be removed from experimental data, and simulations can be made more realistic.

Presenters

  • Ari Maki

    Davidson College

Authors

  • Ari Maki

    Davidson College

  • Sidney Knowles

    Davidson College

  • Michelle Kuchera

    Davidson College

  • Raghuram Ramanujan

    Davidson College

  • Yassid Ayyad

    FRIB/NSCL, National Superconducting Cyclotron Laboratory, Michigan State University

  • Leo Hu

    Davidson College

  • Daniel Bazin

    Michigan State University, NSCL Michigan State University, FRIB

  • Wolfgang Mittig

    Michigan State University