Novel deep learning methods for track reconstruction
Steven Farrell, Paolo Calafiura, Mayur Mudigonda, Prabhat, Dustin, Anderson, Jean-Roch Vlimant, Stephan Zheng, Josh Bendavid, Maria Spiropulu,, Giuseppe Cerati, Lindsey Gray, Jim Kowalkowski, Panagiotis Spentzouris,, Aristeidis Tsaris

TL;DR
This paper introduces new deep learning models, including RNNs and GNNs, for particle track reconstruction in high-energy physics, demonstrating scalable and efficient solutions on simulated detector data.
Contribution
It presents novel deep learning architectures operating on space-point data, improving scalability and uncertainty estimation in track reconstruction tasks.
Findings
Models successfully reconstruct tracks on simulated data.
GNNs effectively classify hits and segments.
RNNs estimate track parameters with uncertainty.
Abstract
For the past year, the HEP.TrkX project has been investigating machine learning solutions to LHC particle track reconstruction problems. A variety of models were studied that drew inspiration from computer vision applications and operated on an image-like representation of tracking detector data. While these approaches have shown some promise, image-based methods face challenges in scaling up to realistic HL-LHC data due to high dimensionality and sparsity. In contrast, models that can operate on the spacepoint representation of track measurements ("hits") can exploit the structure of the data to solve tasks efficiently. In this paper we will show two sets of new deep learning models for reconstructing tracks using space-point data arranged as sequences or connected graphs. In the first set of models, Recurrent Neural Networks (RNNs) are used to extrapolate, build, and evaluate track…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Particle physics theoretical and experimental studies · Particle Detector Development and Performance
