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Optical frontend for a convolutions neural network

机译:用于卷积神经网络的光学前端

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摘要

The parallelism of optics and the miniaturization of optical components using nanophotonic structures, such as metasurfaces, present a compelling alternative to electronic implementations of convolutional neural networks. The lack of a low-power optical nonlinearity, however, requires slow and energy-inefficient conversions between the electronic and optical domains. Here, we design an architecture that utilizes a single electrical to optical conversion by designing a free-space optical frontend unit that implements the linear operations of the first layer with the subsequent layers realized electronically. Speed and power analysis of the architecture indicates that the hybrid photonic-electronic architecture outperforms a fully electronic architecture for large image sizes and kernels. Benchmarking of the photonic-electronic architecture on a modified version of AlexNet achieves high classification accuracies on images from the Kaggle's Cats and Dogs challenge and MNIST databases. (C) 2019 Optical Society of America
机译:光学器件的平行和光学部件的小型化使用纳米光结构,例如元素结构,对卷积神经网络的电子实现具有令人信服的替代方案。然而,缺乏低功率光学非线性需要电子和光学畴之间的慢速和能量效率。这里,我们设计一种架构,其通过设计自由空间光学前端单元利用单个电气到光学转换,该自由空间光学前端单元与电子方式实现的后续层实现第一层的线性操作。架构的速度和功率分析表明,混合电力 - 电子架构优于大型图像尺寸和内核的全电子架构。光子电子架构在修改版的AlexNet上的基准测试在卡格的猫和狗挑战和Mnist数据库中的图像上实现了高分类的准确性。 (c)2019年光学学会

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  • 来源
    《Applied optics》 |2019年第12期|共8页
  • 作者单位

    Univ Washington Elect &

    Comp Engn Seattle WA 98195 USA;

    Univ Washington Appl Math Seattle WA 98195 USA;

    Univ Washington Elect &

    Comp Engn Seattle WA 98195 USA;

    Univ Washington Elect &

    Comp Engn Seattle WA 98195 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 应用;
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