Learning-based phase imaging using a low-bit-depth pattern

被引:1
作者
ZHENYU ZHOU [1 ]
JUN XIA [1 ]
JUN WU [1 ]
CHENLIANG CHANG [2 ]
XI YE [3 ]
SHUGUANG LI [3 ]
BINTAO DU [1 ]
HAO ZHANG [1 ]
GUODONG TONG [1 ]
机构
[1] Joint International Research Laboratory of Information Display and Visualization, School of Electronic Science and Engineering,Southeast University
[2] Department of Bioengineering, University of California
[3] Shanghai Aerospace Electronic Technology Institute
关键词
D O I
暂无
中图分类号
TP391.41 []; O439 [应用光学];
学科分类号
070207 ; 080203 ; 0803 ;
摘要
Phase imaging always deals with the problem of phase invisibility when capturing objects with existing light sensors. However, there is a demand for multiplane full intensity measurements and iterative propagation process or reliance on reference in most conventional approaches. In this paper, we present an end-to-end compressible phase imaging method based on deep neural networks, which can implement phase estimation using only binary measurements. A thin diffuser as a preprocessor is placed in front of the image sensor to implicitly encode the incoming wavefront information into the distortion and local variation of the generated speckles. Through the trained network, the phase profile of the object can be extracted from the discrete grains distributed in the low-bitdepth pattern. Our experiments demonstrate the faithful reconstruction with reasonable quality utilizing a single binary pattern and verify the high redundancy of the information in the intensity measurement for phase recovery. In addition to the advantages of efficiency and simplicity compared to now available imaging methods,our model provides significant compressibility for imaging data and can therefore facilitate the low-cost detection and efficient data transmission.
引用
收藏
页码:1624 / 1633
页数:10
相关论文
共 6 条
  • [1] Physical picture of the optical memory effect[J]. HONGLIN LIU,ZHENTAO LIU,MEIJUN CHEN,SHENSHENG HAN,LIHONG V.WANG.Photonics Research. 2019(11)
  • [2] Digital Holography, a metrological tool for quantitative analysis: Trends and future applications[J] . Melania Paturzo,Vito Pagliarulo,Vittorio Bianco,Pasquale Memmolo,Lisa Miccio,Francesco Merola,Pietro Ferraro.Optics and Lasers in Engineering . 2018
  • [3] Rapid quantitative phase imaging using the transport of intensity equation[J] . T.E Gureyev,K.A Nugent.Optics Communications . 1997 (1)
  • [4] Nonlinear imaging using object-dependent illumination .2 J.-T.Lu,A.S.Goy,J.W.Fleischer. Sci.Rep . 2019
  • [5] Deep speckle correlation:a deep learning approach toward scalable imaging through scattering media .2 Li Y Z,Xue Y J,Tian L. Optica . 2018
  • [6] Digital image formation from electronically detected holograms .2 Goodman J W,Wlawerence R. Applied Physics Letters . 1967