Identifying muon rings in VERITAS data using convolutional neural networks trained on images classified with Muon Hunters 2
Kevin Flanagan, John Quinn (for the VERITAS Collaboration), Darryl, Wright, Hugh Dickinson, Patrick Wilcox, Michael Laraia, Stephen Serjeant

TL;DR
This paper presents a CNN-based method trained on citizen science labels to identify muon rings in VERITAS data, significantly improving calibration accuracy and detection efficiency over existing algorithms.
Contribution
The study introduces a CNN trained on aggregated citizen science labels, achieving superior muon identification performance compared to traditional algorithms.
Findings
Identifies ~30 times more muon images than VEGAS algorithm.
Detects ~2.5 times more muon images than Hough transform method.
Outperforms CNN trained on VEGAS-labelled data.
Abstract
Muons from extensive air showers appear as rings in images taken with imaging atmospheric Cherenkov telescopes, such as VERITAS. These muon-ring images are used for the calibration of the VERITAS telescopes, however the calibration accuracy can be improved with a more efficient muon-identification algorithm. Convolutional neural networks (CNNs) are used in many state-of-the-art image-recognition systems and are ideal for muon image identification, once trained on a suitable dataset with labels for muon images. However, by training a CNN on a dataset labelled by existing algorithms, the performance of the CNN would be limited by the suboptimal muon-identification efficiency of the original algorithms. Muon Hunters 2 is a citizen science project that asks users to label grids of VERITAS telescope images, stating which images contain muon rings. Each image is labelled 10 times by…
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Taxonomy
TopicsAstrophysics and Cosmic Phenomena · Radiation Detection and Scintillator Technologies · COVID-19 diagnosis using AI
