OPTICSCVNEAug 8, 2022

All-optical image classification through unknown random diffusers using a single-pixel diffractive network

arXiv:2208.03968v161 citationsh-index: 24
Originality Incremental advance
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This addresses a challenge in computational imaging and machine vision for applications like biomedical imaging and autonomous driving, offering a novel optical approach but with incremental improvements over existing deep learning methods.

The paper tackled the problem of classifying objects behind unknown random diffusers by developing an all-optical processor using a single-pixel diffractive network, achieving a blind testing accuracy of 88.53% for handwritten digits.

Classification of an object behind a random and unknown scattering medium sets a challenging task for computational imaging and machine vision fields. Recent deep learning-based approaches demonstrated the classification of objects using diffuser-distorted patterns collected by an image sensor. These methods demand relatively large-scale computing using deep neural networks running on digital computers. Here, we present an all-optical processor to directly classify unknown objects through unknown, random phase diffusers using broadband illumination detected with a single pixel. A set of transmissive diffractive layers, optimized using deep learning, forms a physical network that all-optically maps the spatial information of an input object behind a random diffuser into the power spectrum of the output light detected through a single pixel at the output plane of the diffractive network. We numerically demonstrated the accuracy of this framework using broadband radiation to classify unknown handwritten digits through random new diffusers, never used during the training phase, and achieved a blind testing accuracy of 88.53%. This single-pixel all-optical object classification system through random diffusers is based on passive diffractive layers that process broadband input light and can operate at any part of the electromagnetic spectrum by simply scaling the diffractive features proportional to the wavelength range of interest. These results have various potential applications in, e.g., biomedical imaging, security, robotics, and autonomous driving.

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