论文标题

未对准的弹性衍射光网络

Misalignment Resilient Diffractive Optical Networks

论文作者

Mengu, Deniz, Zhao, Yifan, Yardimci, Nezih T., Rivenson, Yair, Jarrahi, Mona, Ozcan, Aydogan

论文摘要

作为一个光学机器学习框架,衍射深神经网络(D2NN)利用了用于深度学习的数据驱动训练方法,以设计3D中的光结合互动,以执行所需的统计推断任务。已经证明,使用此衍射框架设计的多层光学对象识别平台已被证明可以概括地看不见的图像数据实现了例如,> 98%的手写数字分类的盲目推理精度。衍射网络的多层结构在其衍射效率,推理能力和光学信号对比度方面具有显着优势。但是,多种衍射层的使用也为这些衍射系统的制造和比对带来了实用的挑战,以进行准确的光学推断。在这里,我们介绍并实验展示了一种新的培训方案,该方案可显着提高衍射网络在训练有素的衍射网络的物理实现中,易疗法网络与3D未对准和制造公差的鲁棒性。通过将3D中的不想要的层到层未对准建模为光向远期模型中的连续随机变量,训练衍射网络以保持其推理准确性在众多未对准范围内;我们将此衍射网络设计称为接种的D2NN(V-D2NN)。我们进一步将这种疫苗接种策略扩展到训练衍射网络的训练,这些网络在输出平面上使用差异探测器,以及共同训练的混合动力(光学电子)网络,以揭示所有这些衍射设计在其训练阶段可能会考虑到可能的3D制造变化和位移,从而提高了其对未对准的弹性。

As an optical machine learning framework, Diffractive Deep Neural Networks (D2NN) take advantage of data-driven training methods used in deep learning to devise light-matter interaction in 3D for performing a desired statistical inference task. Multi-layer optical object recognition platforms designed with this diffractive framework have been shown to generalize to unseen image data achieving e.g., >98% blind inference accuracy for hand-written digit classification. The multi-layer structure of diffractive networks offers significant advantages in terms of their diffraction efficiency, inference capability and optical signal contrast. However, the use of multiple diffractive layers also brings practical challenges for the fabrication and alignment of these diffractive systems for accurate optical inference. Here, we introduce and experimentally demonstrate a new training scheme that significantly increases the robustness of diffractive networks against 3D misalignments and fabrication tolerances in the physical implementation of a trained diffractive network. By modeling the undesired layer-to-layer misalignments in 3D as continuous random variables in the optical forward model, diffractive networks are trained to maintain their inference accuracy over a large range of misalignments; we term this diffractive network design as vaccinated D2NN (v-D2NN). We further extend this vaccination strategy to the training of diffractive networks that use differential detectors at the output plane as well as to jointly-trained hybrid (optical-electronic) networks to reveal that all of these diffractive designs improve their resilience to misalignments by taking into account possible 3D fabrication variations and displacements during their training phase.

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