Coherent noise suppression in digital holographic microscopy based on label-free deep learning

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Abstract

Deep learning techniques can be introduced into the digital holography to suppress the coherent noise. It is often necessary to first make a dataset of noisy and noise-free phase images to train the network. However, noise-free images are often difficult to obtain in practical holographic applications. Here we propose a label-free training algorithms based on self-supervised learning. A dilated blind spot network is built to learn from the real noisy phase images and a noise level function network to estimate a noise level function. Then they are trained together via maximizing the constrained negative log-likelihood and Bayes’ rule to generate a denoising phase image. The experimental results demonstrate that our method outperforms standard smoothing algorithms in accurately reconstructing the true phase image in digital holographic microscopy.

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Wu, J., Tang, J., Zhang, J., & Di, J. (2022). Coherent noise suppression in digital holographic microscopy based on label-free deep learning. Frontiers in Physics, 10. https://doi.org/10.3389/fphy.2022.880403

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