Diffractive optical neural networks

Aydogan Ozcan
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Abstract

We introduce a diffractive optical neural network architecture that can all-optically implement various functions, following the deep learning-based design of passive layers that work collectively. We created 3D-printed diffractive networks that implement all-optical classification of images of handwritten digits and fashion products as well as the function of an imaging lens, spectral filters, wavelength demultiplexers and ultra-short pulse shapers at terahertz part of the spectrum. This passive diffractive network framework is broadly applicable to different parts of the electromagnetic spectrum, including the visible wavelengths, and can perform at the speed of light various complex functions that computer-based neural networks can implement, and will find applications in all-optical image analysis, feature detection and object classification, also enabling new camera designs and optical components that perform unique tasks using diffractive networks designed by deep learning.
衍射光学神经网络
我们介绍了一个衍射光神经网络架构,它可以全光实现各种功能,遵循基于深度学习的无源层设计,这些无源层共同工作。我们创建了3d打印的衍射网络,实现了手写数字和时尚产品图像的全光学分类,以及成像镜头、光谱滤波器、波长解复用器和太赫兹部分光谱的超短脉冲成形器的功能。这种无源衍射网络框架广泛适用于电磁波谱的不同部分,包括可见波长,并且可以以光速执行计算机神经网络可以实现的各种复杂功能,并将在全光图像分析,特征检测和目标分类中得到应用。此外,还支持使用深度学习设计的衍射网络执行独特任务的新相机设计和光学组件。
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