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Machine learning assisted quantum super-resolution microscopy

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Abstract

A machine learning assisted framework significantly speeds up image acquisition in super-resolution microscopy based on photon antibunching. The technique is compatible with a CW excitation regime and applicable to a wide range of quantum emitters.

© 2021 The Author(s)

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