Efficient ML-Assisted Particle Track Reconstruction Designs
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| Publication date | 2025 |
| Journal | EPJ Web of Conferences |
| Article number | 01299 |
| Volume | Issue number | 337 |
| Number of pages | 8 |
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| Abstract |
Track reconstruction is a crucial part of High Energy Physics experiments. Traditional methods for the task, relying on Kalman Filters, scale poorly with detector occupancy. In the context of the upcoming High Luminosity-LHC, solutions based on Machine Learning (ML) and deep learning are very appealing. We investigate the feasibility of training multiple ML architectures to infer track-defining parameters from detector signals, for the application of offline reconstruction. We study and compare three Transformer model designs, as well as a U-Net architecture. We describe in detail the two most promising approaches and benchmark the pipelines for physics performance and inference speed on methodically simplified datasets, generated by the recently developed simulation framework, REDuced VIrtual Detector (REDVID). Our second batch of simplified datasets are derived from the TrackML dataset. Our preliminary results show promise for the application of such deep learning techniques on more realistic data for tracking, as well as efficient elimination of solutions.
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| Document type | Article |
| Language | English |
| Published at | https://doi.org/10.1051/epjconf/202533701299 |
| Downloads |
epjconf_chep2025_01299
(Final published version)
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