OPTICSCVLGIVFeb 8, 2024

3D-2D Neural Nets for Phase Retrieval in Noisy Interferometric Imaging

arXiv:2402.06063v13 citationsh-index: 16APL Machine Learning
Originality Incremental advance
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This addresses phase noise in interferometric imaging, which is crucial for applications like remote sensing with limited light intensity, though it is an incremental improvement over existing neural network methods.

The paper tackles phase retrieval in noisy interferometric imaging by introducing a 3D-2D neural network (PRUNe) that processes noisy interferograms to output a 2D phase image, achieving a 2.5-4 times lower mean squared error compared to a state-of-the-art algorithm across various signal-to-noise ratios.

In recent years, neural networks have been used to solve phase retrieval problems in imaging with superior accuracy and speed than traditional techniques, especially in the presence of noise. However, in the context of interferometric imaging, phase noise has been largely unaddressed by existing neural network architectures. Such noise arises naturally in an interferometer due to mechanical instabilities or atmospheric turbulence, limiting measurement acquisition times and posing a challenge in scenarios with limited light intensity, such as remote sensing. Here, we introduce a 3D-2D Phase Retrieval U-Net (PRUNe) that takes noisy and randomly phase-shifted interferograms as inputs, and outputs a single 2D phase image. A 3D downsampling convolutional encoder captures correlations within and between frames to produce a 2D latent space, which is upsampled by a 2D decoder into a phase image. We test our model against a state-of-the-art singular value decomposition algorithm and find PRUNe reconstructions consistently show more accurate and smooth reconstructions, with a x2.5 - 4 lower mean squared error at multiple signal-to-noise ratios for interferograms with low (< 1 photon/pixel) and high (~100 photons/pixel) signal intensity. Our model presents a faster and more accurate approach to perform phase retrieval in extremely low light intensity interferometry in presence of phase noise, and will find application in other multi-frame noisy imaging techniques.

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