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Research on the X-Ray Polarization Deconstruction Method Based on Hexagonal Convolutional Neural Network

arxiv(2023)

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摘要
Track reconstruction algorithms are critical for polarization measurements. In addition to traditional moment-based track reconstruction approaches, convolutional neural networks (CNN) are a promising alternative. However, hexagonal grid track images in gas pixel detectors (GPD) for better anisotropy do not match the classical rectangle-based CNN, and converting the track images from hexagonal to square results in loss of information. We developed a new hexagonal CNN algorithm for track reconstruction and polarization estimation in X-ray polarimeters, which was used to extract emission angles and absorption points from photoelectron track images and predict the uncertainty of the predicted emission angles. The simulated data of PolarLight test were used to train and test the hexagonal CNN models. For individual energies, the hexagonal CNN algorithm produced 15-30 moment analysis method for 100 comparable to rectangle-based CNN algorithm newly developed by IXPE team, but at a much less computational cost.
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关键词
X-ray polarization,Track reconstruction,Deep learning,Hexagonal conventional neural network
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