Pattern Recognition, Tracking and Vertex Reconstruction in Particle Detectors Pattern Recognition, Tracking and Vertex Reconstruction in Particle Detectors
Particle Acceleration and Detection

Pattern Recognition, Tracking and Vertex Reconstruction in Particle Detectors

Publisher Description

This open access book is a comprehensive review of the methods and algorithms that are used in the reconstruction of events recorded by past, running and planned experiments at particle accelerators such as the LHC, SuperKEKB and FAIR. The main topics are pattern recognition for track and vertex finding, solving the equations of motion by analytical or numerical methods, treatment of material effects such as multiple Coulomb scattering and energy loss, and the estimation of track and vertex parameters by statistical algorithms. The material covers both established methods and recent developments in these fields and illustrates them by outlining exemplary solutions developed by selected experiments. The clear presentation enables readers to easily implement the material in a high-level programming language. It also highlights software solutions that are in the public domain whenever possible. It is a valuable resource for PhD students and researchers working on online or offline reconstruction for their experiments. 

GENRE
Science & Nature
RELEASED
2021
26 February
LANGUAGE
EN
English
LENGTH
220
Pages
PUBLISHER
Springer International Publishing
SIZE
25
MB

Other Books in This Series

Radio-Frequency Quadrupole Accelerators Radio-Frequency Quadrupole Accelerators
2023
Neutron Detectors for Scattering Applications Neutron Detectors for Scattering Applications
2023
Intelligent Beam Control in Accelerators Intelligent Beam Control in Accelerators
2023
Novel Lights Sources Beyond Free Electron Lasers Novel Lights Sources Beyond Free Electron Lasers
2022
Low-Level Radio Frequency Systems Low-Level Radio Frequency Systems
2022
Safety for Particle Accelerators Safety for Particle Accelerators
2020