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Data processing for atomic resolution electron energy loss spectroscopy

机译:原子分辨率电子能量损失谱的数据处理

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摘要

The high beam current and subangstrom resolution of aberration-corrected scanning transmission electron microscopes has enabled electron energy loss spectroscopy (EELS) mapping with atomic resolution. These spectral maps are often dose limited and spatially oversampled, leading to low counts/channel and are thus highly sensitive to errors in background estimation. However, by taking advantage of redundancy in the dataset map, one can improve background estimation and increase chemical sensitivity. We consider two such approaches-linear combination of power laws and local background averaging-that reduce background error and improve signal extraction. Principal component analysis (PCA) can also be used to analyze spectrum images, but the poor peak-to-background ratio in EELS can lead to serious artifacts if raw EELS data are PCA filtered. We identify common artifacts and discuss alternative approaches. These algorithms are implemented within the Cornell Spectrum Imager, an open source software package for spectroscopic analysis.
机译:像差校正扫描透射电子显微镜的高束流和亚埃分辨率可实现具有原子分辨率的电子能量损失谱(EELS)映射。这些光谱图通常受剂量限制并且在空间上过度采样,导致计数/通道低,因此对背景估计中的误差高度敏感。但是,通过利用数据集图中的冗余,可以改善背景估计并提高化学敏感性。我们考虑两种这样的方法-幂律的线性组合和局部背景平均-可以减少背景误差并改善信号提取。主成分分析(PCA)也可以用于分析光谱图像,但是如果对原始EELS数据进行PCA滤波,则EELS中较差的峰本比会导致严重的伪影。我们确定常见的工件并讨论替代方法。这些算法在康奈尔光谱成像仪(用于光谱分析的开源软件包)中实现。

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