Computational imaging without a computer: seeing through random diffusers at the speed of light

被引:0
作者
Yi Luo
Yifan Zhao
Jingxi Li
Ege Çetintaş
Yair Rivenson
Mona Jarrahi
Aydogan Ozcan
机构
[1] University of California,Electrical and Computer Engineering Department
[2] Los Angeles,Bioengineering Department
[3] University of California,undefined
[4] Los Angeles,undefined
[5] California NanoSystems Institute,undefined
[6] University of California,undefined
[7] Los Angeles,undefined
来源
eLight | / 2卷
关键词
Imaging through diffusers; Computational imaging; Diffractive neural network; Deep learning;
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学科分类号
摘要
Imaging through diffusers presents a challenging problem with various digital image reconstruction solutions demonstrated to date using computers. Here, we present a computer-free, all-optical image reconstruction method to see through random diffusers at the speed of light. Using deep learning, a set of transmissive diffractive surfaces are trained to all-optically reconstruct images of arbitrary objects that are completely covered by unknown, random phase diffusers. After the training stage, which is a one-time effort, the resulting diffractive surfaces are fabricated and form a passive optical network that is physically positioned between the unknown object and the image plane to all-optically reconstruct the object pattern through an unknown, new phase diffuser. We experimentally demonstrated this concept using coherent THz illumination and all-optically reconstructed objects distorted by unknown, random diffusers, never used during training. Unlike digital methods, all-optical diffractive reconstructions do not require power except for the illumination light. This diffractive solution to see through diffusers can be extended to other wavelengths, and might fuel various applications in biomedical imaging, astronomy, atmospheric sciences, oceanography, security, robotics, autonomous vehicles, among many others.
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