高光谱信息提取与全分辨率从任意照片。

IF 13.7
Semin Kwon;Sang Mok Park;Yuhyun Ji;Haripriya Sakthivel;Jung Woo Leem;Young L. Kim
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引用次数: 0

摘要

由于光学光谱仪捕获了图像之外的丰富的分子、生物和物理信息,因此正在进行的工作集中在算法和硬件方法上,以获得详细的光谱信息。由传统三色相机获取的红-绿-蓝(RGB)值进行光谱重建一直是一个活跃的研究领域。然而,所得到的光谱轮廓常常不仅受到样品本身未知光谱特性的影响,还受到光照条件、器件特性和图像文件格式的影响。现有的用于光谱重建的机器学习模型由于依赖于特定任务的训练数据或固定模型,在泛化方面进一步受到限制。采用复杂纳米制造组件的先进光谱仪硬件也限制了可扩展性和可负担性。在这里,我们引入了一个通用的计算框架,与光谱非相干的颜色参考图共同设计,以恢复任意样本的光谱信息从单张照片的可见范围。参考颜色选择和计算算法的相互优化消除了对训练数据或预训练模型的需要。在透射模式下,通过改变参考色的RGB值来恢复样品的光谱强度,达到与科学光谱仪相当的光谱分辨率。在反射模式下,样品的光谱超立方体可以由单张照片构造,类似于高光谱成像。报道的计算摄影光谱法有可能使光谱学和高光谱成像使用现成的智能手机。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hyperspectral Information Extraction With Full Resolution From Arbitrary Photographs
Because optical spectrometers capture abundant molecular, biological, and physical information beyond images, ongoing efforts focus on both algorithmic and hardware approaches to obtain detailed spectral information. Spectral reconstruction from red-green-blue (RGB) values acquired by conventional trichromatic cameras has been an active area of study. However, the resultant spectral profile is often affected not only by the unknown spectral properties of the sample itself, but also by light conditions, device characteristics, and image file formats. Existing machine learning models for spectral reconstruction are further limited in generalizability due to their reliance on task-specific training data or fixed models. Advanced spectrometer hardware employing sophisticated nanofabricated components also constrains scalability and affordability. Here we introduce a general computational framework, co-designed with spectrally incoherent color reference charts, to recover the spectral information of an arbitrary sample from a single-shot photo in the visible range. The mutual optimization of reference color selection and the computational algorithm eliminates the need for training data or pretrained models. In transmission mode, altered RGB values of reference colors are used to recover the spectral intensity of the sample, achieving spectral resolution comparable to that of scientific spectrometers. In reflection mode, a spectral hypercube of the sample can be constructed from a single-shot photo, analogous to hyperspectral imaging. The reported computational photography spectrometry has the potential to make optical spectroscopy and hyperspectral imaging accessible using off-the-shelf smartphones.
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