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Deep Learning Method for Quantum Efficiency Reconstruction

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Abstract

We suggest a new scheme for measuring the quantum efficiency of camera sensors based on the reflection from a variable width Fabry-Perot resonator and a deep learning algorithm, outperforming standart reconstruction methods.

© 2021 The Author(s)

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