Catch and Prolong: recurrent neural network for seeking track-candidates

11/14/2018
by   Dmitriy Baranov, et al.
0

One of the most important problems of data processing in high energy and nuclear physics is the event reconstruction. Its main part is the track reconstruction procedure which consists in looking for all tracks that elementary particles leave when they pass through a detector among a huge number of points, so-called hits, produced when flying particles fire detector coordinate planes. Unfortunately, the tracking is seriously impeded by the famous shortcoming of multiwired, strip and GEM detectors due to appearance in them a lot of fake hits caused by extra spurious crossings of fired strips. Since the number of those fakes is several orders of magnitude greater than for true hits, one faces with the quite serious difficulty to unravel possible track-candidates via true hits ignoring fakes. We introduce a renewed method that is a significant improvement of our previous two-stage approach based on hit preprocessing using directed K-d tree search followed a deep neural classifier. We combine these two stages in one by applying recurrent neural network that simultaneously determines whether a set of points belongs to a true track or not and predicts where to look for the next point of track on the next coordinate plane of the detector. We show that proposed deep network is more accurate, faster and does not require any special preprocessing stage. Preliminary results of our approach for simulated events of the BM@N GEM detector are presented.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/07/2018

The particle track reconstruction based on deep learning neural networks

One of the most important problems of data processing in high energy and...
research
09/25/2017

Numerical optimization for Artificial Retina Algorithm

High-energy physics experiments rely on reconstruction of the trajectori...
research
07/08/2022

Search by triplet: An efficient local track reconstruction algorithm for parallel architectures

Millions of particles are collided every second at the LHCb detector pla...
research
03/11/2021

Physics and Computing Performance of the Exa.TrkX TrackML Pipeline

The Exa.TrkX project has applied geometric learning concepts such as met...
research
11/02/2022

Implicit Neural Representation as a Differentiable Surrogate for Photon Propagation in a Monolithic Neutrino Detector

Optical photons are used as signal in a wide variety of particle detecto...
research
06/26/2020

Point Proposal Network for Reconstructing 3D Particle Positions with Sub-Pixel Precision in Liquid Argon Time Projection Chambers

Liquid Argon Time Projection Chambers (LArTPC) are particle imaging dete...
research
08/28/2020

Using Artificial Intelligence for Particle Track Identification in CLAS12 Detector

In this article we describe the development of machine learning models t...

Please sign up or login with your details

Forgot password? Click here to reset