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通过最小梯度法可视化二维图像中的色散特征。

Visualizing dispersive features in 2D image via minimum gradient method.

作者信息

He Yu, Wang Yan, Shen Zhi-Xun

机构信息

SIMES, SLAC National Accelerator Laboratory, Menlo Park, California 94025, USA.

Microsoft, Redmond, Washington 98052, USA.

出版信息

Rev Sci Instrum. 2017 Jul;88(7):073903. doi: 10.1063/1.4993919.

Abstract

We developed a minimum gradient based method to track ridge features in a 2D image plot, which is a typical data representation in many momentum resolved spectroscopy experiments. Through both analytic formulation and numerical simulation, we compare this new method with existing DC (distribution curve) based and higher order derivative based analyses. We find that the new method has good noise resilience and enhanced contrast especially for weak intensity features and meanwhile preserves the quantitative local maxima information from the raw image. An algorithm is proposed to extract 1D ridge dispersion from the 2D image plot, whose quantitative application to angle-resolved photoemission spectroscopy measurements on high temperature superconductors is demonstrated.

摘要

我们开发了一种基于最小梯度的方法来跟踪二维图像图中的脊线特征,这是许多动量分辨光谱实验中的典型数据表示形式。通过解析公式和数值模拟,我们将这种新方法与现有的基于分布曲线(DC)和基于高阶导数的分析方法进行了比较。我们发现,这种新方法具有良好的抗噪声能力和增强的对比度,特别是对于弱强度特征,同时还保留了原始图像中的定量局部最大值信息。我们提出了一种从二维图像图中提取一维脊线色散的算法,并展示了其在高温超导体角分辨光电子能谱测量中的定量应用。

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