Wang Haozhu, Guo L Jay
Department of Electrical Engineering and Computer Science, University of Michigan, Ann Arbor, MI, USA.
iScience. 2022 Apr 30;25(5):104339. doi: 10.1016/j.isci.2022.104339. eCollection 2022 May 20.
Designing optical structures for generating structural colors is challenging because of the complex relationship between the optical structures and the color perceived by human eyes. Machine learning-based approaches have been developed to expedite this design process. However, existing methods solely focus on structural parameters of the optical design, which could lead to suboptimal color generation because of the inability to optimize the selection of materials. To address this issue, an approach known as Neural Particle Swarm Optimization is proposed in this paper. The proposed method achieves high design accuracy and efficiency on two structural color design tasks; the first task is designing environment-friendly alternatives to chrome coatings, and the second task concerns reconstructing pictures with multilayer optical thin films. Several designs that could replace chrome coatings have been discovered; pictures with more than 200,000 pixels and thousands of unique colors can be accurately reconstructed in a few hours.
由于光学结构与人类眼睛所感知颜色之间存在复杂关系,设计用于生成结构色的光学结构具有挑战性。基于机器学习的方法已被开发出来以加快这一设计过程。然而,现有方法仅关注光学设计的结构参数,由于无法优化材料选择,这可能导致颜色生成效果欠佳。为解决此问题,本文提出了一种名为神经粒子群优化的方法。该方法在两项结构色设计任务中实现了高设计精度和效率;第一项任务是设计镀铬涂层的环保替代品,第二项任务是用多层光学薄膜重建图片。已发现了几种可替代镀铬涂层的设计;在几小时内就能准确重建具有超过200,000像素和数千种独特颜色的图片。