A novel combination of established data analysis techniques for reconstructing charged-particles in high energy collisions is proposed. It uses all information available in a collision event while keeping competing choices open as long as possible. Suitable track candidates are selected by transforming measured hits to a binned, three- or four-dimensional, track parameter space. It is accomplished by the use of templates taking advantage of the translational and rotational symmetries of the detectors. Track candidates and their corresponding hits, the nodes, form a usually highly connected network, a bipartite graph, where we allow for multiple hit to track assignments, edges. In order to get a manageable problem, the graph is cut into very...
In this paper, machine learning techniques are used to reconstruct particle collision pathways. CERN...
The Large Hadron Collider at CERN will collide protons at \sqrtS = 14TeV and lead ions at \sqrt$\S_{...
Particle physics has become a massively data-intensive discipline. Huge particle accelerators — such...
A novel combination of established data analysis techniques for reconstructing all charged-particle ...
Charged particle track reconstruction is a major component of data-processing in high-energy physics...
At the High Luminosity Large Hadron Collider (HL-LHC), many proton-proton collisions happen durin...
Reconstructing tracks in the events taken by LHC experiments is one of the most challenging and comp...
Tracking in high density environments plays an important role in many physics analyses at the LHC. I...
The LHCb track reconstruction uses sophisticated pattern recognition algorithms to reconstruct traje...
The document describes the challenge data, task and organizationCan Machine Learning assist High Ene...
Track reconstruction in high track multiplicity environments at current and future high rate particl...
The reconstruction of particle trajectories, tracking, is a central process in the reconstruction of...
International audienceAs experiments in high energy physics aim to measure increasingly rare process...
In this paper, machine learning techniques are used to reconstruct particle collision pathways. CERN...
The Large Hadron Collider at CERN will collide protons at \sqrtS = 14TeV and lead ions at \sqrt$\S_{...
Particle physics has become a massively data-intensive discipline. Huge particle accelerators — such...
A novel combination of established data analysis techniques for reconstructing all charged-particle ...
Charged particle track reconstruction is a major component of data-processing in high-energy physics...
At the High Luminosity Large Hadron Collider (HL-LHC), many proton-proton collisions happen durin...
Reconstructing tracks in the events taken by LHC experiments is one of the most challenging and comp...
Tracking in high density environments plays an important role in many physics analyses at the LHC. I...
The LHCb track reconstruction uses sophisticated pattern recognition algorithms to reconstruct traje...
The document describes the challenge data, task and organizationCan Machine Learning assist High Ene...
Track reconstruction in high track multiplicity environments at current and future high rate particl...
The reconstruction of particle trajectories, tracking, is a central process in the reconstruction of...
International audienceAs experiments in high energy physics aim to measure increasingly rare process...
In this paper, machine learning techniques are used to reconstruct particle collision pathways. CERN...
The Large Hadron Collider at CERN will collide protons at \sqrtS = 14TeV and lead ions at \sqrt$\S_{...
Particle physics has become a massively data-intensive discipline. Huge particle accelerators — such...