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arxiv 2201.00601 v1 pith:KCSC5Y34 submitted 2022-01-03 eess.IV physics.optics

Generative adversarial network for super-resolution imaging through a fiber

classification eess.IV physics.optics
keywords imagingfiberadversarialcompressivegenerativeimagelimitmultimode
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A multimode fiber represents the ultimate limit in miniaturization of imaging endoscopes. Here we propose a fiber imaging approach employing compressive sensing with a data-driven machine learning framework. We implement a generative adversarial network for image reconstruction without relying on a sample sparsity constraint. The proposed method outperforms the conventional compressive imaging algorithms in terms of image quality and noise robustness. We experimentally demonstrate speckle-based imaging below the diffraction limit at a sub-Nyquist speed through a multimode fiber.

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