
Single photon counting compressive imaging using a generative model optimized via sampling and transfer learning
Author(s) -
Wei Gao,
Qiurong Yan,
Huilin Zhou,
Shiqiang Yang,
Zheyu Fang,
Yuhao Wang
Publication year - 2021
Publication title -
optics express
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.394
H-Index - 271
ISSN - 1094-4087
DOI - 10.1364/oe.413925
Subject(s) - compressed sensing , computer science , autoencoder , iterative reconstruction , sampling (signal processing) , artificial intelligence , photon counting , convergence (economics) , reconstruction algorithm , algorithm , computer vision , deep learning , optics , physics , detector , telecommunications , filter (signal processing) , economics , economic growth
Single photon counting compressive imaging, a combination of single-pixel-imaging and single-photon-counting technology, is provided with low cost and ultra-high sensitivity. However, it requires a long imaging time when applying traditional compressed sensing (CS) reconstruction algorithms. A deep-learning-based compressed reconstruction network refrains iterative computation while achieving efficient reconstruction. This paper proposes a compressed reconstruction network (OGTM) based on a generative model, adding sampling sub-network to achieve joint-optimization of sampling and generation for better reconstruction. To avoid the slow convergence caused by alternating training, initial weights of the sampling and generation sub-network are transferred from an autoencoder. The results indicate that the convergence speed and imaging quality are significantly improved. The OGTM validated on a single-photon compressive imaging system performs imaging experiments on specific and generalized targets. For specific targets, the results demonstrate that OGTM can quickly generate images from few measurements, and its reconstruction is better than the existing compressed sensing recovery algorithms, compensating defects of the generative models in compressed sensing.