Abstract
Ghost imaging has gone through from quantum to classical pseudothermal to computational field over the last two decades. As a kernel part in computational ghost imaging (CGI), the reconstruction algorithm plays a decisive role in imaging quality and system practicality. In order to introduce more prior knowledge into the reconstruction algorithm, existing research adds image patch prior into CGI and improves the imaging efficiency. In this paper, the total variation minimization algorithm via adaptive deep dictionary learning (TVADDL) is proposed to update an adaptive deep dictionary through the CGI reconstruction process. The proposed algorithm framework is able to capture more precise texture features with a multi-layer architecture dictionary and adapt the learned dictionary by gradient descent on CGI reconstruction loss value. The results of simulation and experiment show that TVADDL can achieve higher peak signal-to-noise ratio than the algorithms without patch prior and the algorithms using the shallow dictionary or non-adaptive deep dictionary.
© 2019 Optical Society of America
Full Article | PDF ArticleMore Like This
Xuemei Hu, Jinli Suo, Tao Yue, Liheng Bian, and Qionghai Dai
Opt. Express 23(9) 11092-11104 (2015)
Fei Wang, Hao Wang, Haichao Wang, Guowei Li, and Guohai Situ
Opt. Express 27(18) 25560-25572 (2019)
Zhan Yu, Yang Liu, Jinxi Li, Xing Bai, Zhongzhuo Yang, Yang Ni, and Xin Zhou
Appl. Opt. 61(4) 1022-1029 (2022)