鬼影成像
奇异值分解
奇异值
矩阵分解
基质(化学分析)
算法
迭代重建
光学
反向
数学
计算机科学
物理
人工智能
几何学
量子力学
特征向量
复合材料
材料科学
作者
Xue Zhang,Xiangfeng Meng,Xin Yang,Yurong Wang,Yongkai Yin,Xianye Li,Xiang Peng,Wenqi He,Guoyan Dong,Hongyi Chen
出处
期刊:Optics Express
[Optica Publishing Group]
日期:2018-05-04
卷期号:26 (10): 12948-12948
被引量:38
摘要
The singular value decomposition ghost imaging (SVDGI) is proposed to enhance the fidelity of computational ghost imaging (GI) by constructing a measurement matrix using singular value decomposition (SVD) transform. After SVD transform on a random matrix, the non-zero elements of singular value matrix are all made equal to 1.0, then the measurement matrix is acquired by inverse SVD transform. Eventually, the original objects can be reconstructed by multiplying the transposition of the matrix by a series of collected intensity. SVDGI enables the reconstruction of an N-pixel image using much less than N measurements, and perfectly reconstructs original object with N measurements. Both the simulated and the optical experimental results show that SVDGI always costs less time to accomplish better works. Firstly, it is at least ten times faster than GI and differential ghost imaging (DGI), and several orders of magnitude faster than pseudo-inverse ghost imaging (PGI). Secondly, in comparison with GI, the clarity of SVDGI can get sharply improved, and it is more robust than the other three methods so that it yields a clearer image in the noisy environment.
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