阴极发光高光谱图的像移校正、噪声分析及模型拟合。

N. Tappy, A. Fontcuberta i Morral, C. Monachon
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引用次数: 1

摘要

高光谱成像是现代光谱学的一项重要资产。它允许我们在高空间分辨率下进行光学计量,例如在扫描电子显微镜中的阴极发光。然而,与单独采集的光谱相比,高光谱数据集由于其较低的信噪比和特定像差,在分析中带来了额外的挑战。另一方面,高光谱数据集中的大量信息允许应用源自机器学习的高级统计分析方法。在本文中,我们提出了一种在高光谱地图上执行模型拟合的方法,利用主成分分析对数据集进行彻底的噪声分析。我们解释了如何纠正成像偏移伪影,具体到成像光谱,通过直接评估它从数据。讨论了拟合优度指标和参数不确定性的影响。我们提供了如何将该技术应用于使用其他实验技术获得的各种高光谱数据集的指示。作为一个实际示例,我们使用开源Python库hyperspy提供了该分析的实现,该库是使用科学界中建立良好的Jupyter Notebook框架实现的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image shift correction, noise analysis, and model fitting of (cathodo-)luminescence hyperspectral maps.
Hyperspectral imaging is an important asset of modern spectroscopy. It allows us to perform optical metrology at a high spatial resolution, for example in cathodoluminescence in scanning electron microscopy. However, hyperspectral datasets present added challenges in their analysis compared to individually taken spectra due to their lower signal to noise ratio and specific aberrations. On the other hand, the large volume of information in a hyperspectral dataset allows the application of advanced statistical analysis methods derived from machine-learning. In this article, we present a methodology to perform model fitting on hyperspectral maps, leveraging principal component analysis to perform a thorough noise analysis of the dataset. We explain how to correct the imaging shift artifact, specific to imaging spectroscopy, by directly evaluating it from the data. The impact of goodness-of-fit-indicators and parameter uncertainties is discussed. We provide indications on how to apply this technique to a variety of hyperspectral datasets acquired using other experimental techniques. As a practical example, we provide an implementation of this analysis using the open-source Python library hyperspy, which is implemented using the well established Jupyter Notebook framework in the scientific community.
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