Data class-specific all-optical transformations and encryption
Bijie Bai, Heming Wei, Xilin Yang, Deniz Mengu, Aydogan Ozcan

TL;DR
This paper introduces a novel all-optical data class-specific transformation and encryption method using diffractive networks, enabling secure, fast, and energy-efficient image processing and encryption tailored to different data classes.
Contribution
The work presents the first implementation of data class-specific all-optical transformations and encryption using diffractive networks, including experimental validation at 1550 nm.
Findings
Successfully demonstrated class-specific transformations for amplitude, phase, and intensity data.
Fabricated and tested a class-specific I-->I transformation diffractive network.
Showed potential for secure, multi-user optical data encryption and privacy enhancement.
Abstract
Diffractive optical networks provide rich opportunities for visual computing tasks since the spatial information of a scene can be directly accessed by a diffractive processor without requiring any digital pre-processing steps. Here we present data class-specific transformations all-optically performed between the input and output fields-of-view (FOVs) of a diffractive network. The visual information of the objects is encoded into the amplitude (A), phase (P), or intensity (I) of the optical field at the input, which is all-optically processed by a data class-specific diffractive network. At the output, an image sensor-array directly measures the transformed patterns, all-optically encrypted using the transformation matrices pre-assigned to different data classes, i.e., a separate matrix for each data class. The original input images can be recovered by applying the correct decryption…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Advanced Optical Imaging Technologies · Random lasers and scattering media
