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Neural Lithography: Close the Design-to-Manufacturing Gap in Computational Optics with a 'Real2Sim' Learned Photolithography Simulator

Authors :
Zheng, Cheng
Zhao, Guangyuan
So, Peter T. C.
Zheng, Cheng
Zhao, Guangyuan
So, Peter T. C.
Publication Year :
2023

Abstract

We introduce neural lithography to address the 'design-to-manufacturing' gap in computational optics. Computational optics with large design degrees of freedom enable advanced functionalities and performance beyond traditional optics. However, the existing design approaches often overlook the numerical modeling of the manufacturing process, which can result in significant performance deviation between the design and the fabricated optics. To bridge this gap, we, for the first time, propose a fully differentiable design framework that integrates a pre-trained photolithography simulator into the model-based optical design loop. Leveraging a blend of physics-informed modeling and data-driven training using experimentally collected datasets, our photolithography simulator serves as a regularizer on fabrication feasibility during design, compensating for structure discrepancies introduced in the lithography process. We demonstrate the effectiveness of our approach through two typical tasks in computational optics, where we design and fabricate a holographic optical element (HOE) and a multi-level diffractive lens (MDL) using a two-photon lithography system, showcasing improved optical performance on the task-specific metrics.<br />Comment: The paper, titled "Close the Design-to-Manufacturing Gap in Computational Optics with a 'Real2Sim' Learned Two-Photon Neural Lithography Simulator," has been accepted for presentation at SIGGRAPH Asia 2023. This version offers a more comprehensive and accessible read. Project page: https://neural-litho.github.io

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1438484161
Document Type :
Electronic Resource