Self-supervised learning of hologram reconstruction using physics consistency
Luzhe Huang, Hanlong Chen, Tairan Liu, Aydogan Ozcan

TL;DR
This paper introduces GedankenNet, a self-supervised hologram reconstruction model that learns physics-consistent image reconstruction without labeled data, demonstrating superior generalization and robustness across various biological samples and experimental conditions.
Contribution
The paper presents a novel self-supervised learning approach for hologram reconstruction that does not require labeled training data or prior sample knowledge, leveraging physics consistency for improved generalization.
Findings
Successfully generalized to unseen biological holograms
Achieved physics-consistent complex-valued reconstructions
Exhibited robustness to physical perturbations
Abstract
The past decade has witnessed transformative applications of deep learning in various computational imaging, sensing and microscopy tasks. Due to the supervised learning schemes employed, these methods mostly depend on large-scale, diverse, and labeled training data. The acquisition and preparation of such training image datasets are often laborious and costly, also leading to biased estimation and limited generalization to new sample types. Here, we report a self-supervised learning model, termed GedankenNet, that eliminates the need for labeled or experimental training data, and demonstrate its effectiveness and superior generalization on hologram reconstruction tasks. Without prior knowledge about the sample types to be imaged, the self-supervised learning model was trained using a physics-consistency loss and artificial random images that are synthetically generated without any…
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Taxonomy
TopicsDigital Holography and Microscopy · Advanced Optical Imaging Technologies · Image Processing Techniques and Applications
MethodsTest
