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Diffractive neural networks with improved expressive power for gray-scale image classification

Minjia Zheng, Wenzhe Liu, Lei Shi, Jian Zi

2024Photonics Research12 citationsDOI

Abstract

In order to harness diffractive neural networks (DNNs) for tasks that better align with real-world computer vision requirements, the incorporation of gray scale is essential. Currently, DNNs are not powerful enough to accomplish gray-scale image processing tasks due to limitations in their expressive power. In our work, we elucidate the relationship between the improvement in the expressive power of DNNs and the increase in the number of phase modulation layers, as well as the optimization of the Fresnel number, which can describe the diffraction process. To demonstrate this point, we numerically trained a double-layer DNN, addressing the prerequisites for intensity-based gray-scale image processing. Furthermore, we experimentally constructed this double-layer DNN based on digital micromirror devices and spatial light modulators, achieving eight-level intensity-based gray-scale image classification for the MNIST and Fashion-MNIST data sets. This optical system achieved the maximum accuracies of 95.10% and 80.61%, respectively.

Topics & Concepts

MNIST databaseComputer scienceArtificial intelligenceArtificial neural networkGrayscaleImage processingSpatial frequencyComputer visionPattern recognition (psychology)OpticsImage (mathematics)PhysicsNeural Networks and Reservoir ComputingAdvanced Memory and Neural ComputingOptical Network Technologies
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