This work presents a novel application of machine learning to the pattern-recognition stage of charged-particle reconstruction, enabling learned hit-to-track association within dense environments, such as the cores of high-pTjets. Our Transformer-based architecture is based on a MaskFormer model that jointly optimises hit assignments and the estimation of the charged particles' properties. Trained and evaluated in dense environments the model delivers up to a 30% improvement in track-reconstruction efficiency over the standard ATLAS reconstruction when local particle density makes conventional reconstruction most challenging.Scientific contact person Juste Rozas, Aurelio, (aurelio.juste.rozas@cern.ch)
ATLAS Collaboration (Wed,) studied this question.
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