Class-specific differential detection in diffractive optical neural networks improves inference accuracy

被引:0
|
作者
Jingxi Li [1 ,2 ,3 ]
Deniz Mengu [1 ,2 ,3 ]
Yi Luo [1 ,2 ,3 ]
Yair Rivenson [1 ,2 ,3 ]
Aydogan Ozcan [1 ,2 ,3 ]
机构
[1] 不详
[2] University of California at Los Angeles, Department of Electrical and Computer Engineering
[3] 不详
[4] University of California at Los Angeles, Department of Bioengineering
[5] University of California at Los Angeles, California Nano Systems Institute
[6] 不详
关键词
D O I
暂无
中图分类号
TP183 [人工神经网络与计算]; O436.1 [干涉与衍射];
学科分类号
摘要
Optical computing provides unique opportunities in terms of parallelization, scalability, power efficiency, and computational speed and has attracted major interest for machine learning. Diffractive deep neural networks have been introduced earlier as an optical machine learning framework that uses task-specific diffractive surfaces designed by deep learning to all-optically perform inference, achieving promising performance for object classification and imaging. We demonstrate systematic improvements in diffractive optical neural networks, based on a differential measurement technique that mitigates the strict nonnegativity constraint of light intensity. In this differential detection scheme, each class is assigned to a separate pair of detectors, behind a diffractive optical network, and the class inference is made by maximizing the normalized signal difference between the photodetector pairs. Using this differential detection scheme, involving 10 photodetector pairs behind 5 diffractive layers with a total of 0.2 million neurons, we numerically achieved blind testing accuracies of 98.54%, 90.54%, and 48.51% for MNIST, Fashion-MNIST, and grayscale CIFAR-10 datasets, respectively. Moreover, by utilizing the inherent parallelization capability of optical systems, we reduced the cross-talk and optical signal coupling between the positive and negative detectors of each class by dividing the optical path into two jointly trained diffractive neural networks that work in parallel. We further made use of this parallelization approach and divided individual classes in a target dataset among multiple jointly trained diffractive neural networks. Using this class-specific differential detection in jointly optimized diffractive neural networks that operate in parallel, our simulations achieved blind testing accuracies of 98.52%, 91.48%, and 50.82% for MNIST, Fashion-MNIST, and grayscale CIFAR-10 datasets, respectively, coming close to the performance of some of the earlier generations of all-electronic deep neural networks, e.g., Le Net, which achieves classification accuracies of98.77%, 90.27%, and 55.21% corresponding to the same datasets, respectively. In addition to these jointly optimized diffractive neural networks, we also independently optimized multiple diffractive networks and utilized them in a way that is similar to ensemble methods practiced in machine learning; using 3 independently optimized differential diffractive neural networks that optically project their light onto a common output/detector plane, we numerically achieved blind testing accuracies of 98.59%, 91.06%, and 51.44% for MNIST, Fashion-MNIST, and grayscale CIFAR-10 datasets, respectively. Through these systematic advances in designing diffractive neural networks, the reported classification accuracies set the state of the art for all-optical neural network design. The presented framework might be useful to bring optical neural network-based low power solutions for various machine learning applications and help us design new computational cameras that are task-specific.
引用
收藏
页码:5 / 17
页数:13
相关论文
共 50 条
  • [41] Nondeterministic discretization of weights improves accuracy of neural networks
    Wojnarski, Marcin
    MACHINE LEARNING: ECML 2007, PROCEEDINGS, 2007, 4701 : 765 - 772
  • [42] Optical Diffractive Convolutional Neural Networks Implemented in an All-Optical Way
    Yu, Yaze
    Cao, Yang
    Wang, Gong
    Pang, Yajun
    Lang, Liying
    SENSORS, 2023, 23 (12)
  • [43] Understanding holistic human pose using class-specific convolutional neural network
    Faranak Shamsafar
    Hossein Ebrahimnezhad
    Multimedia Tools and Applications, 2018, 77 : 23193 - 23225
  • [44] Understanding holistic human pose using class-specific convolutional neural network
    Shamsafar, Faranak
    Ebrahimnezhad, Hossein
    MULTIMEDIA TOOLS AND APPLICATIONS, 2018, 77 (18) : 23193 - 23225
  • [45] COMPARISON OF SENSITIVITIES OF ELISA AND RADIOIMMUNOASSAY FOR DETECTION OF CLASS-SPECIFIC ANTIBODY IN MOUSE SERUM
    TAYLOR, FGR
    PATEL, D
    BOURNE, FJ
    JOURNAL OF IMMUNOLOGICAL METHODS, 1983, 65 (1-2) : 65 - 73
  • [46] SIMPLE HAEMADHERENCE TEST FOR THE DETECTION OF CLASS-SPECIFIC IMMUNOGLOBULINS TO HEPATITIS-A VIRUS
    PERRY, KR
    PARRY, JV
    JOURNAL OF MEDICAL VIROLOGY, 1993, 39 (01) : 23 - 27
  • [47] Discriminative Sparse Image Models for Class-Specific Edge Detection and Image Interpretation
    Mairal, Julien
    Leordeanu, Marius
    Bach, Francis
    Hebert, Martial
    Ponce, Jean
    COMPUTER VISION - ECCV 2008, PT III, PROCEEDINGS, 2008, 5304 : 43 - +
  • [48] Differential drug class-specific metastatic effects following treatment with a panel of angiogenesis inhibitors
    Chung, Alicia S.
    Kowanetz, Marcin
    Wu, Xiumin
    Zhuang, Guanglei
    Ngu, Hai
    Finkle, David
    Komuves, Laszlo
    Peale, Franklin
    Ferrara, Napoleone
    JOURNAL OF PATHOLOGY, 2012, 227 (04): : 404 - 416
  • [49] CLASSIFIER REFINEMENT FOR WEAKLY SUPERVISED OBJECT DETECTION WITH CLASS-SPECIFIC ACTIVATION MAP
    Du, Peilun
    Zhang, Haitao
    Ma, Huadong
    2019 IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING (ICIP), 2019, : 3367 - 3371
  • [50] A Class-specific Copy Network for Handling the Rare Word Problem in Neural Machine Translation
    Wang, Feng
    Chen, Wei
    Yang, Zhen
    Zhang, Xiaowei
    Xu, Shuang
    Xu, Bo
    2017 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2017, : 2658 - 2664