High Energy Physics experiments require fast and efficient methods toreconstruct the tracks of charged particles. Commonly used algorithms aresequential and the CPU required increases rapidly with a number of tracks.Neural networks can speed up the process due to their capability to modelcomplex non-linear data dependencies and finding all tracks in parallel.In this paper we describe the application of the Deep Neural Networkto the reconstruction of straight tracks in a toy two-dimensional model. It isplanned to apply this method to the experimental data taken by the MUonEexperiment at CERN
Particle track reconstruction in dense environments such as the detectors of the High Luminosity Lar...
Particle track reconstruction in dense environments such as the detectors of the High Luminosity Lar...
Reconstruction of charged particle tracks is a central task in the processing of physics data at the...
High Energy Physics experiments require fast and efficient methods toreconstruct the tracks of charg...
High energy physics experiments require fast and efficient methods for reconstructing the tracks of...
One of the most important problems of data processing in high energy and nuclear physics is the even...
One of the most important problems of data processing in high energy and nuclear physics is the even...
One of the most important problems of data processing in high energy and nuclear physics is the even...
One of the most important problems of data processing in high energy and nuclear physics is the even...
A neural network algorithm for finding tracks in high energy physics experiments is presented. The p...
Particle track reconstruction in dense environments such as the detectors of the High Luminosity Lar...
For the past year, the HEP.TrkX project has been investigating machine learning solutions to LHC par...
Particle track reconstruction is a challenging problem in modern high-energy physics detectors where...
Particle track reconstruction is a challenging problem in modern high-energy physics detectors where...
Development of tracking algorithm with deep learning techniques A range of models inspired by comput...
Particle track reconstruction in dense environments such as the detectors of the High Luminosity Lar...
Particle track reconstruction in dense environments such as the detectors of the High Luminosity Lar...
Reconstruction of charged particle tracks is a central task in the processing of physics data at the...
High Energy Physics experiments require fast and efficient methods toreconstruct the tracks of charg...
High energy physics experiments require fast and efficient methods for reconstructing the tracks of...
One of the most important problems of data processing in high energy and nuclear physics is the even...
One of the most important problems of data processing in high energy and nuclear physics is the even...
One of the most important problems of data processing in high energy and nuclear physics is the even...
One of the most important problems of data processing in high energy and nuclear physics is the even...
A neural network algorithm for finding tracks in high energy physics experiments is presented. The p...
Particle track reconstruction in dense environments such as the detectors of the High Luminosity Lar...
For the past year, the HEP.TrkX project has been investigating machine learning solutions to LHC par...
Particle track reconstruction is a challenging problem in modern high-energy physics detectors where...
Particle track reconstruction is a challenging problem in modern high-energy physics detectors where...
Development of tracking algorithm with deep learning techniques A range of models inspired by comput...
Particle track reconstruction in dense environments such as the detectors of the High Luminosity Lar...
Particle track reconstruction in dense environments such as the detectors of the High Luminosity Lar...
Reconstruction of charged particle tracks is a central task in the processing of physics data at the...