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
Fiber bundle imaging systems use a bundle of single coherent fiber cores as imaging probe to capture...
Imaging through perturbed multimode fibres based on deep learning has been widely researched. Howeve...
We propose a deep learning based method to estimate high-resolution images from multiple fiber bundl...
A multimode fiber represents the ultimate limit in miniaturization of imaging endoscopes. However, s...
Image transmission through a multi-mode fiber is a difficult task given the complex interference of ...
Imaging through a multimode fiber (MMF) with a spatial-resolution beyond the diffraction limit has r...
We propose a data -driven approach for light transmission control inside multimode fibers (MMFs). Sp...
Abstract Multimode fibers (MMFs) have the potential to carry complex images for endoscopy and relate...
International audienceFluorescence imaging through ultrathin fibers is a promising approach to obtai...
Recent burgeoning machine learning has revolutionized our ways of looking at the world. Being extrao...
Multimode fibers (MMFs) are an example of a highly scattering medium, which scramble the coherent li...
We demonstrate the use of deep learning for fast spectral deconstruction of speckle patterns. The ar...
We propose and experimentally demonstrate a new concept of endo-microscopy: compressive multimode (M...
Image delivery through multimode fibers (MMFs) suffers from modal scrambling which results in a spec...
Deep generative models, such as Generative Adversarial Networks, Variational Autoencoders, Flow-base...
Fiber bundle imaging systems use a bundle of single coherent fiber cores as imaging probe to capture...
Imaging through perturbed multimode fibres based on deep learning has been widely researched. Howeve...
We propose a deep learning based method to estimate high-resolution images from multiple fiber bundl...
A multimode fiber represents the ultimate limit in miniaturization of imaging endoscopes. However, s...
Image transmission through a multi-mode fiber is a difficult task given the complex interference of ...
Imaging through a multimode fiber (MMF) with a spatial-resolution beyond the diffraction limit has r...
We propose a data -driven approach for light transmission control inside multimode fibers (MMFs). Sp...
Abstract Multimode fibers (MMFs) have the potential to carry complex images for endoscopy and relate...
International audienceFluorescence imaging through ultrathin fibers is a promising approach to obtai...
Recent burgeoning machine learning has revolutionized our ways of looking at the world. Being extrao...
Multimode fibers (MMFs) are an example of a highly scattering medium, which scramble the coherent li...
We demonstrate the use of deep learning for fast spectral deconstruction of speckle patterns. The ar...
We propose and experimentally demonstrate a new concept of endo-microscopy: compressive multimode (M...
Image delivery through multimode fibers (MMFs) suffers from modal scrambling which results in a spec...
Deep generative models, such as Generative Adversarial Networks, Variational Autoencoders, Flow-base...
Fiber bundle imaging systems use a bundle of single coherent fiber cores as imaging probe to capture...
Imaging through perturbed multimode fibres based on deep learning has been widely researched. Howeve...
We propose a deep learning based method to estimate high-resolution images from multiple fiber bundl...