Sensors (Jun 2023)

Optical Diffractive Convolutional Neural Networks Implemented in an All-Optical Way

  • Yaze Yu,
  • Yang Cao,
  • Gong Wang,
  • Yajun Pang,
  • Liying Lang

DOI
https://doi.org/10.3390/s23125749
Journal volume & issue
Vol. 23, no. 12
p. 5749

Abstract

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Optical neural networks can effectively address hardware constraints and parallel computing efficiency issues inherent in electronic neural networks. However, the inability to implement convolutional neural networks at the all-optical level remains a hurdle. In this work, we propose an optical diffractive convolutional neural network (ODCNN) that is capable of performing image processing tasks in computer vision at the speed of light. We explore the application of the 4f system and the diffractive deep neural network (D2NN) in neural networks. ODCNN is then simulated by combining the 4f system as an optical convolutional layer and the diffractive networks. We also examine the potential impact of nonlinear optical materials on this network. Numerical simulation results show that the addition of convolutional layers and nonlinear functions improves the classification accuracy of the network. We believe that the proposed ODCNN model can be the basic architecture for building optical convolutional networks.

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