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Auto-encoders for Track Reconstruction in Drift Chambers for CLAS12
Published 10 Sep 2020 in cs.CV and physics.ins-det | (2009.05144v2)
Abstract: In this article we describe the development of machine learning models to assist the CLAS12 tracking algorithm by identifying tracks through inferring missing segments in the drift chambers. Auto encoders are used to reconstruct missing segments from track trajectory. Implemented neural network was able to reliably reconstruct missing segment positions with accuracy of $\approx 0.35$ wires, and lead to recovery of missing tracks with accuracy of $>99.8\%$.
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