Advanced Photonics Nexus, Volume. 4, Issue 2, 026009(2025)

Compressed meta-optical encoder for image classification Editors' Pick

Anna Wirth-Singh1、†,*, Jinlin Xiang2, Minho Choi2, Johannes E. Fröch1,2, Luocheng Huang2, Shane Colburn2, Eli Shlizerman2,3, and Arka Majumdar1,2、*
Author Affiliations
  • 1University of Washington, Department of Physics, Seattle, Washington, United States
  • 2University of Washington, Department of Electrical and Computer Engineering, Seattle, Washington, United States
  • 3University of Washington, Department of Applied Mathematics, Seattle, Washington, United States
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    Figures & Tables(6)
    Schematic of CNNs for image classification tasks. (a) All-electronic multi-layered CNN. (b) All-electronic compressed CNN. (c) Hybrid CNN that combines an optical meta-optic front end and electronic backend. (d) Number of MAC operations of each network configuration, with convolutional MACs in green and fully connected MACs in brown.
    Schematic of the optical system. (a) PSF measurement setup using a monochromatic point light source (left) and optical convolution measurements using a micro-LED display (right). (b) Photograph of the fabricated meta-optics. The meta-optic contains 16 different suboptics, spatially distributed in a single layer, operating in parallel for classification tasks. (c) Phase maps and SEM images of exemplary suboptics corresponding to the positive and negative parts of a particular convolutional kernel. (d) Positive and negative parts of an example convolutional kernel (left), the corresponding PSF simulation (middle), and experiment (right). (e) Simulated electronic output (left) and optical experiment (right) convolved output for the example kernel, for the case of an input “7” from MNIST.
    Confusion matrices for different network architectures. (a) Classification results for AlexNet-Mod (multiple-layer electronic CNN). (b) Classification results for the all-electronic CNN compressed without using KD. (c) Classification results for the all-electronic CNN compressed with KD. (d) Classification results for the hybrid optical–electronic CNN.
    PCA of the hybrid CNN. (a) PCA of the uncalibrated experimental hybrid CNN classification data. (b) PCA of the calibrated experimental data, which has been remapped and exhibits clustering behavior similar to that of the compressed electronic CNN data. (c) PCA of the compressed electronic CNN data.
    • Table 1. Classification results.

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      Table 1. Classification results.

      Network architectureTrain (%)Test (%)MAC operations
      AlexNet-Mod98.9 ± 0.3398.4 ± 0.3217,323,520
      Compressed electronic CNN (without KD)84.2 ± 0.4782.1 ± 0.69228,672
      Compressed electronic CNN (KD)97.2 ± 0.3596.2 ± 0.29228,672
      Hybrid CNN (KD)93.9 ± 0.2593.4 ± 0.2285,824
    • Table 2. Network ablation study.

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      Table 2. Network ablation study.

      ConfigurationTrain accuracyTest accuracy
      Backend only89%87%
      Calibration + backend84%80%
      Optics + calibration + backend94% (+5%/+10%)93% (+6%/+13%)
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    Anna Wirth-Singh, Jinlin Xiang, Minho Choi, Johannes E. Fröch, Luocheng Huang, Shane Colburn, Eli Shlizerman, Arka Majumdar, "Compressed meta-optical encoder for image classification," Adv. Photon. Nexus 4, 026009 (2025)

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    Paper Information

    Category: Research Articles

    Received: Nov. 13, 2024

    Accepted: Jan. 14, 2025

    Published Online: Feb. 26, 2025

    The Author Email: Anna Wirth-Singh (annaw77@uw.edu), Arka Majumdar (arka@uw.edu)

    DOI:10.1117/1.APN.4.2.026009

    CSTR:32397.14.1.APN.4.2.026009

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