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Sub-Nyquist computational ghost imaging with deep learning

Heng Wu, Ruizhou Wang, Genping Zhao, Huapan Xiao, Daodang Wang, Jian Liang, Xiaobo Tian, Lianglun Cheng, Xianmin Zhang

2020Optics Express79 citationsDOIOpen Access PDF

Abstract

We propose a deep learning computational ghost imaging (CGI) scheme to achieve sub-Nyquist and high-quality image reconstruction. Unlike the second-order-correlation CGI and compressive-sensing CGI, which use lots of illumination patterns and a one-dimensional (1-D) light intensity sequence (LIS) for image reconstruction, a deep neural network (DAttNet) is proposed to restore the target image only using the 1-D LIS. The DAttNet is trained with simulation data and retrieves the target image from experimental data. The experimental results indicate that the proposed scheme can provide high-quality images with a sub-Nyquist sampling ratio and performs better than the conventional and compressive-sensing CGI methods in sub-Nyquist sampling ratio conditions (e.g., 5.45%). The proposed scheme has potential practical applications in underwater, real-time and dynamic CGI.

Topics & Concepts

Ghost imagingNyquist–Shannon sampling theoremComputer scienceCompressed sensingImage qualityNyquist rateArtificial intelligenceNyquist frequencySampling (signal processing)Deep learningIterative reconstructionComputer visionOpticsAlgorithmImage (mathematics)PhysicsFilter (signal processing)Random lasers and scattering mediaOrbital Angular Momentum in OpticsImage and Video Quality Assessment
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