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Coincidence imaging for Jones matrix with a deep-learning approach

Physics

Coincidence imaging for Jones matrix with a deep-learning approach

J. Xi, T. K. Yung, et al.

Discover an innovative deep-learning technique for Jones matrix imaging using photon arrival data, crafted by researchers Jiawei Xi, Tsz Kit Yung, Hong Liang, Tan Li, Wing Yim Tam, and Jensen Li. This groundbreaking approach surpasses traditional low-light measurement methods, enhancing accuracy while minimizing photon requirements.

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~3 min • Beginner • English
Abstract
Coincidence measurement has become an emerging technique for optical imaging. Based on measuring the second-order coherence g₂, sample features such as reflection/transmission amplitude and phase delay can be extracted with developed algorithms pixel-by-pixel. However, an accurate measurement of g₂ requires a substantial number of collected photons which becomes difficult under low-light conditions. Here, we propose a deep-learning approach for Jones matrix imaging using photon arrival data directly. A variational autoencoder (β-VAE) is trained using numerical data in an unsupervised manner to obtain a minimal data representation, which can be transformed into an image with little effort. We demonstrate as few as 88 photons collected per pixel on average to extract a Jones matrix image, with accuracy surpassing previous semi-analytic algorithms derived from g₂. Our approach not only automates formulating imaging algorithms but can also assess the sufficiency of information from a designed experimental procedure, which can be useful in equipment or algorithm designs for a wide range of imaging applications.
Publisher
npj Nanophotonics
Published On
Mar 06, 2024
Authors
Jiawei Xi, Tsz Kit Yung, Hong Liang, Tan Li, Wing Yim Tam, Jensen Li
Tags
deep learning
Jones matrix
imaging
photon arrival data
variational autoencoder
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