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Computational ghost imaging with spatiotemporal encoding pseudo-random binary patterns
Ye, Zhiyuan1; Liu, Hong-Chao2; Xiong, Jun1
2020-10-12
Source PublicationOPTICS EXPRESS
ISSN1094-4087
Volume28Issue:21Pages:31163-31179
Abstract

Computational ghost imaging (CGI) can reconstruct the pixelated image of a target without lenses and image sensors. In almost all spatial CGI systems using various patterns reported in the past, people often only focus on the distribution of patterns in the spatial dimension but ignore the possibility of encoding in the time dimension or even the space-time dimension. Although the random illumination pattern in CGI always brings some inevitable background noise to the recovered image, it has considerable advantages in optical encryption, authentication, and watermarking technologies. In this paper, we focus on stimulating the potential of random lighting patterns in the space-time dimension for embedding large amounts of information. Inspired by binary CGI and second-order correlation operations, we design two novel generation schemes of pseudo-random patterns for information embedding that are suitable for different scenarios. Specifically, we embed a total of 10,000 ghost images (64 × 64 pixels) of the designed Hadamard-matrix-based data container patterns in the framework of CGI, and these ghost images can be quantitatively decoded to two 8-bit standard grayscale images, with a total data volume of 1, 280, 000 bits. Our scheme has good noise resistance and a low symbol error rate. One can design the number of lighting patterns and the information capacity of the design patterns according to the trade-off between accuracy and efficiency. Our scheme, therefore, paves the way for CGI using random lighting patterns to embed large amounts of information and provides new insights into CGI-based encryption, authentication, and watermarking technologies.

DOI10.1364/OE.403375
URLView the original
Indexed BySCIE
Language英語English
WOS Research AreaOptics
WOS SubjectOptics
WOS IDWOS:000581089500059
Scopus ID2-s2.0-85093921167
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Citation statistics
Document TypeJournal article
CollectionINSTITUTE OF APPLIED PHYSICS AND MATERIALS ENGINEERING
Corresponding AuthorLiu, Hong-Chao; Xiong, Jun
Affiliation1.Department of Physics, Applied Optics Beijing Area Major Laboratory, Beijing Normal University, Beijing 100875, China
2.Joint Key Laboratory of the Ministry of Education, Institute of Applied Physics and Materials Engineering, University of Macau, Avenida da Universidade, Taipa, Macao SAR, China
Corresponding Author AffilicationINSTITUTE OF APPLIED PHYSICS AND MATERIALS ENGINEERING
Recommended Citation
GB/T 7714
Ye, Zhiyuan,Liu, Hong-Chao,Xiong, Jun. Computational ghost imaging with spatiotemporal encoding pseudo-random binary patterns[J]. OPTICS EXPRESS, 2020, 28(21), 31163-31179.
APA Ye, Zhiyuan., Liu, Hong-Chao., & Xiong, Jun (2020). Computational ghost imaging with spatiotemporal encoding pseudo-random binary patterns. OPTICS EXPRESS, 28(21), 31163-31179.
MLA Ye, Zhiyuan,et al."Computational ghost imaging with spatiotemporal encoding pseudo-random binary patterns".OPTICS EXPRESS 28.21(2020):31163-31179.
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