Invention Application
- Patent Title: DEVICES AND METHODS EMPLOYING OPTICAL-BASED MACHINE LEARNING USING DIFFRACTIVE DEEP NEURAL NETWORKS
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Application No.: US17843720Application Date: 2022-06-17
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Publication No.: US20220366253A1Publication Date: 2022-11-17
- Inventor: Aydogan Ozcan , Yair Rivenson , Xing Lin , Deniz Mengu , Yi Luo
- Applicant: THE REGENTS OF THE UNIVERSITY OF CALIFORNIA
- Applicant Address: US CA Oakland
- Assignee: THE REGENTS OF THE UNIVERSITY OF CALIFORNIA
- Current Assignee: THE REGENTS OF THE UNIVERSITY OF CALIFORNIA
- Current Assignee Address: US CA Oakland
- Main IPC: G06N3/08
- IPC: G06N3/08 ; G02B5/18 ; G02B27/42 ; G06K9/62 ; G06N3/04 ; G06V10/94 ; G06V10/147

Abstract:
An all-optical Diffractive Deep Neural Network (D2NN) architecture learns to implement various functions or tasks after deep learning-based design of the passive diffractive or reflective substrate layers that work collectively to perform the desired function or task. This architecture was successfully confirmed experimentally by creating 3D-printed D2NNs that learned to implement handwritten classifications and lens function at the terahertz spectrum. This all-optical deep learning framework can perform, at the speed of light, various complex functions and tasks that computer-based neural networks can implement, and will find applications in all-optical image analysis, feature detection and object classification, also enabling new camera designs and optical components that can learn to perform unique tasks using D2NNs. In alternative embodiments, the all-optical D2NN is used as a front-end in conjunction with a trained, digital neural network back-end.
Public/Granted literature
- US11694082B2 Devices and methods employing optical-based machine learning using diffractive deep neural networks Public/Granted day:2023-07-04
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