Litcius/Paper detail

Point cloud transformers applied to collider physics

V. M. Mikuni, Canelli, Florencia

2021Zurich Open Repository and Archive (University of Zurich)55 citationsDOI

Abstract

Methods for processing point cloud information have seen a great success in collider physics applications. One recent breakthrough in machine learning is the usage of transformer networks to learn semantic relationships between sequences in language processing. In this work, we apply a modified transformer network called point cloud transformer as a method to incorporate the advantages of the transformer architecture to an unordered set of particles resulting from collision events. To compare the performance with other strategies, we study jet-tagging applications for highly-boosted particles.

Topics & Concepts

TransformerCloud computingArchitectureCollisionLarge Hadron ColliderComputer sciencePoint cloudParticle physicsPhysicsArtificial intelligenceEngineeringElectrical engineeringProgramming languageOperating systemVoltageArtVisual artsComputational Physics and Python ApplicationsParticle physics theoretical and experimental studiesImage Processing and 3D Reconstruction
Point cloud transformers applied to collider physics | Litcius