2021
DOI: 10.48550/arxiv.2109.08221
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Utilizing machine learning to improve the precision of fluorescence imaging of cavity-generated spin squeezed states

Benjamin K. Malia,
Yunfan Wu,
Julián Martínez-Rincón
et al.

Abstract: We present a supervised learning model to calibrate the photon collection rate during the fluorescence imaging of cold atoms. The linear regression model finds the collection rate at each location on the sensor such that the atomic population difference equals that of a highly precise optical cavity measurement. This 192 variable regression results in a measurement variance 27% smaller than our previous single variable regression calibration. The measurement variance is now in agreement with the theoretical li… Show more

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