论文标题

衍射光网络的合奏学习

Ensemble learning of diffractive optical networks

论文作者

Rahman, Md Sadman Sakib, Li, Jingxi, Mengu, Deniz, Rivenson, Yair, Ozcan, Aydogan

论文摘要

在利用机器学习力量中受益的光学和光子学领域中,已经出现了许多研究进步。具体而言,由于其在平行化,功率效率和计算速度方面,它对机器学习任务的潜在优势,人们对光学计算硬件产生了兴趣。衍射深神经网络(D2NN)形成了这样的光学计算框架,该框架从基于深度学习的连续衍射层设计中受益于通过这些被动层的输入光衍射,从而可以全面处理信息。 D2NN在各种任务中都表现出成功,包括对象分类,信息的光谱编码,光脉冲成型和成像等。在这里,我们使用功能工程和集合学习可以显着提高衍射光网络的推理性能。在独立训练了总共1252个D2NN之后,这些D2NN通过各种被动输入过滤器进行了多样化,我们应用了一种修剪算法来选择优化的D2NN集合,以共同提高其图像分类精度。通过这种修剪,我们从数值上证明了n = 14和n = 30 d2nns的集合在CIFAR-10测试图像的分类中分别达到61.14%和62.13%的盲测精度,与每个接收到的单个D2NN的平均表现相比,推理提高了> 16%。这些结果构成了迄今为止通过同一数据集上的任何衍射光学神经网络设计达到的最高推理精度,并且可能会提供重要的跨越,以扩大衍射光学图像分类和机器视觉系统的应用空间。

A plethora of research advances have emerged in the fields of optics and photonics that benefit from harnessing the power of machine learning. Specifically, there has been a revival of interest in optical computing hardware, due to its potential advantages for machine learning tasks in terms of parallelization, power efficiency and computation speed. Diffractive Deep Neural Networks (D2NNs) form such an optical computing framework, which benefits from deep learning-based design of successive diffractive layers to all-optically process information as the input light diffracts through these passive layers. D2NNs have demonstrated success in various tasks, including e.g., object classification, spectral-encoding of information, optical pulse shaping and imaging, among others. Here, we significantly improve the inference performance of diffractive optical networks using feature engineering and ensemble learning. After independently training a total of 1252 D2NNs that were diversely engineered with a variety of passive input filters, we applied a pruning algorithm to select an optimized ensemble of D2NNs that collectively improve their image classification accuracy. Through this pruning, we numerically demonstrated that ensembles of N=14 and N=30 D2NNs achieve blind testing accuracies of 61.14% and 62.13%, respectively, on the classification of CIFAR-10 test images, providing an inference improvement of >16% compared to the average performance of the individual D2NNs within each ensemble. These results constitute the highest inference accuracies achieved to date by any diffractive optical neural network design on the same dataset and might provide a significant leapfrog to extend the application space of diffractive optical image classification and machine vision systems.

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