Rahmani, BabakLoterie, DamienKonstantinou, GeorgiaPsaltis, DemetriMoser, Christophe2019-09-262019-09-262019-09-262019-01-0110.1117/12.2508383https://infoscience.epfl.ch/handle/20.500.14299/161525WOS:000484806700006We propose a data -driven approach for light transmission control inside multimode fibers (MMFs). Specifically, we show that a convolutional neural network is able to reconstruct amplitude/phase modulated images from scrambled amplitude -only images obtained at the output of a 0.75m long MMF with a fidelity (correlation) as high as 98%. We show that the trained network shows good generalization as well. In particular, it is shown that the network is able to reconstruct images that do not belong to train/test datasets.Engineering, BiomedicalOpticsImaging Science & Photographic TechnologyEngineeringOpticsImaging Science & Photographic Technologymultimode fibersneural networksdeep learningimage transmissioninformationmicroscopylightDeep learning assisted image transmission in multimode fiberstext::conference output::conference proceedings::conference paper