3D compressive imaging system with a single photon-counting detector

Author:

Li Song1,Liu Xinyuan,Xiao Yi,Ma YueORCID,Yang JianORCID,Zhu Kaineng,Tian XinORCID

Affiliation:

1. Wuhan Institute of Quantum Technology

Abstract

For photon-counting based compressive imaging systems, it is difficult to obtain 3D image with intensity and depth information precisely due to the dead time and shot noise effect of photon-counting detectors. In this study, we design and achieve a 3D compressive imaging system using a single photon-counting detector. To overcome the radiometric distortion arising from the dead time and shot noise, considering the response mechanism of photon-counting detectors, a Bayesian posterior model is derived and a Reversible jump Markov chain Monte Carlo (RJMCMC)-based method is proposed to iteratively obtain model parameters. Experimental and simulation results indicate that the 3D image of targets can be effectively and accurately reconstructed with a smaller number of repeated illuminations and no longer restricted by the photon flux conditions (i.e., breaking through the upper limit of the received signal level). The proposed Bayesian RJMCMC-based radiometric correction method is not only beneficial to single-photon 3D compressive imaging system, but also to any other photon-counting based systems, e.g., photon-counting lidars. In addition, limiting condition of recovering the actual photon number for photon-counting imaging or lidar systems is also quantitatively analyzed, which is of great significance to the system scheme design.

Funder

National Natural Science Foundation of China

National Science and Technology Planning Project

China Postdoctoral Science Foundation

Hubei Provincial Key Research and Development Program, China

Publisher

Optica Publishing Group

Subject

Atomic and Molecular Physics, and Optics

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