Litcius/Paper detail

Compressive ghost imaging through scattering media with deep learning

Fengqiang Li, Ming Zhao, Zhiming Tian, Florian Willomitzer, Oliver Cossairt

2020Optics Express133 citationsDOIOpen Access PDF

Abstract

Imaging through scattering media is challenging since the signal to noise ratio (SNR) of the reflection can be heavily reduced by scatterers. Single-pixel detectors (SPD) with high sensitivities offer compelling advantages for sensing such weak signals. In this paper, we focus on the use of ghost imaging to resolve 2D spatial information using just an SPD. We prototype a polarimetric ghost imaging system that suppresses backscattering from volumetric media and leverages deep learning for fast reconstructions. In this work, we implement ghost imaging by projecting Hadamard patterns that are optimized for imaging through scattering media. We demonstrate good quality reconstructions in highly scattering conditions using a 1.6% sampling rate.

Topics & Concepts

Ghost imagingScatteringOpticsCompressed sensingFocus (optics)Image qualityDetectorPixelPhysicsComputer scienceArtificial intelligenceImage (mathematics)Random lasers and scattering mediaOrbital Angular Momentum in OpticsAdvanced Optical Imaging Technologies