Comparison of deep learning-based compressive imaging from a practitioner's viewpoint
Guy Hanzon,
Or Nizhar,
Vladislav Kravets
et al.
Abstract:For nearly twenty years, a multitude of Compressive Imaging (CI) techniques have been under development. Modern approaches to CI leverage the capabilities of Deep Learning (DL) tools in order to enhance both the sensing model and the reconstruction algorithm. Unfortunately, most of these DL-based CI methods have been developed by simulating the sensing process while overlooking limitations associated with the optical realization of the optimized sensing model. This article presents an outline of the foremost D… Show more
Learned compressive sensing involves data-driven methods for both designing the sensing mechanism and reconstructing the signal. Here we describe a learned compressive holography method utilizing our recently introduced LPTNet.
Learned compressive sensing involves data-driven methods for both designing the sensing mechanism and reconstructing the signal. Here we describe a learned compressive holography method utilizing our recently introduced LPTNet.
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