Badloe Trevon, Yang Younghwan, Lee Seokho, Jeon Dongmin, Youn Jaeseung, Kim Dong Sung, Rho Junsuk
Graduate School of Artificial Intelligence, Pohang University of Science and Technology (POSTECH), Pohang, 37673, Republic of Korea.
Department of Electronics and Information Engineering, Korea University, Sejong, 30019, Republic of Korea.
Adv Sci (Weinh). 2024 Oct;11(39):e2403143. doi: 10.1002/advs.202403143. Epub 2024 Sep 3.
Measurements of the refractive index of liquids are in high demand in numerous fields such as agriculture, food and beverages, and medicine. However, conventional ellipsometric refractive index measurements are too expensive and labor-intensive for consumer devices, while Abbe refractometry is limited to the measurement at a single wavelength. Here, a new approach is proposed using machine learning to unlock the potential of colorimetric metasurfaces for the real-time measurement of the dispersive refractive index of liquids over the entire visible spectrum. The platform with a proof-of-concept experiment for measuring the concentration of glucose is further demonstrated, which holds a profound impact in non-invasive medical sensing. High-index-dielectric metasurfaces are designed and fabricated, while their experimentally measured reflectance and reflected colors, through microscopy and a standard smartphone, are used to train deep-learning models to provide measurements of the dispersive background refractive index with a resolution of ≈10, which is comparable to the known index as measured with ellipsometry. These results show the potential of enabling the unique optical properties of metasurfaces with machine learning to create a platform for the quick, simple, and high-resolution measurement of the dispersive refractive index of liquids, without the need for highly specialized experts and optical procedures.
液体折射率的测量在农业、食品饮料和医学等众多领域有着很高的需求。然而,传统的椭偏仪折射率测量对于消费设备来说过于昂贵且 labor-intensive,而阿贝折射仪仅限于在单一波长下进行测量。在此,提出了一种新方法,利用机器学习来挖掘比色超表面在整个可见光谱范围内实时测量液体色散折射率的潜力。进一步展示了用于测量葡萄糖浓度的具有概念验证实验的平台,这在无创医学传感方面具有深远影响。设计并制造了高折射率介质超表面,同时通过显微镜和标准智能手机对其进行实验测量的反射率和反射颜色,用于训练深度学习模型,以提供分辨率约为 10 的色散背景折射率测量值,这与用椭偏仪测量的已知折射率相当。这些结果表明,利用机器学习实现超表面独特的光学特性,有潜力创建一个无需高度专业的专家和光学程序即可快速、简单且高分辨率地测量液体色散折射率的平台。