Large-Area Fabrication-Aware Computational Diffractive Optics
Kaixuan Wei, Hector A. Jimenez-Romero, Hadi Amata, Jipeng Sun, Qiang Fu, Felix Heide, Wolfgang Heidrich

TL;DR
This paper introduces a fabrication-aware computational design pipeline for large-area diffractive optics, enabling practical, mass-producible optical devices with high fidelity between simulation and fabrication.
Contribution
It presents a super-resolved neural lithography model integrated into differentiable optics frameworks, and a scalable GPU-based computation method for large-scale diffractive optical system design.
Findings
Successful large-area diffractive optics design up to 32.16 mm x 21.44 mm.
High fidelity between simulated designs and fabricated prototypes.
Achieved high-quality imaging using a single diffractive optical element.
Abstract
Differentiable optics, as an emerging paradigm that jointly optimizes optics and (optional) image processing algorithms, has made innovative optical designs possible across a broad range of applications. Many of these systems utilize diffractive optical components (DOEs) for holography, PSF engineering, or wavefront shaping. Existing approaches have, however, mostly remained limited to laboratory prototypes, owing to a large quality gap between simulation and manufactured devices. We aim at lifting the fundamental technical barriers to the practical use of learned diffractive optical systems. To this end, we propose a fabrication-aware design pipeline for diffractive optics fabricated by direct-write grayscale lithography followed by nano-imprinting replication, which is directly suited for inexpensive mass production of large area designs. We propose a super-resolved neural lithography…
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