Artigo Acesso aberto Revisado por pares

Particle identification in camera image sensors using computer vision

2018; Elsevier BV; Volume: 104; Linguagem: Inglês

10.1016/j.astropartphys.2018.08.009

ISSN

1873-2852

Autores

Miles Winter, J. Bourbeau, Sílvia Bravo, Felipe Campos, Matthew Meehan, Jeffrey Peacock, Tyler Ruggles, Cassidy Schneider, Ariel Levi Simons, J. Vandenbroucke,

Tópico(s)

Radiation Detection and Scintillator Technologies

Resumo

We present a deep learning, computer vision algorithm constructed for the purposes of identifying and classifying charged particles in camera image sensors. We apply our algorithm to data collected by the Distributed Electronic Cosmic-ray Observatory (DECO), a global network of smartphones that monitors camera image sensors for the signatures of cosmic rays and other energetic particles, such as those produced by radioactive decays. The algorithm, whose core component is a convolutional neural network, achieves classification performance comparable to human quality across four distinct DECO event topologies. We apply our model to the entire DECO data set and determine a selection that achieves ≥ 90% purity for all event types. In particular, we estimate a purity of 95% when applied to cosmic-ray muons. The automated classification is run on the public DECO data set in real time in order to provide classified particle interaction images to users of the app and other interested members of the public.

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