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Maximising the resolving power of the scanning tunneling microscope

机译:最大化扫描隧道显微镜的分辨能力

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The usual way to present images from a scanning tunneling microscope (STM) is to take multiple images of the same area, to then manually select the one that appears to be of the highest quality, and then to discard the other almost identical images. This is in contrast to most other disciplines where the signal to noise ratio (SNR) of a data set is improved by taking repeated measurements and averaging them. Data averaging can be routinely performed for 1D spectra, where their alignment is straightforward. However, for serial-acquired 2D STM images the nature and variety of image distortions can severely complicate accurate registration. Here, we demonstrate how a significant improvement in the resolving power of the STM can be achieved through automated distortion correction and multi-frame averaging (MFA) and we demonstrate the broad utility of this approach with three examples. First, we show a sixfold enhancement of the SNR of the Si(111)-(7?×?7) reconstruction. Next, we demonstrate that images with sub-picometre height precision can be routinely obtained and show this for a monolayer of Ti2O3 on Au(111). Last, we demonstrate the automated classification of the two chiral variants of the surface unit cells of the (4?×?4) reconstructed SrTiO3(111) surface. Our new approach to STM imaging will allow a wealth of structural and electronic information from surfaces to be extracted that was previously buried in noise.
机译:从扫描隧道显微镜(STM)呈现图像的通常方法是拍摄同一区域的多幅图像,然后手动选择看似质量最高的图像,然后丢弃其他几乎相同的图像。这与大多数其他学科相反,在其他学科中,通过进行重复测量并取平均值可以提高数据集的信噪比(SNR)。可以对一维光谱进行常规的数据平均,因为它们的对准很简单。但是,对于串行获取的2D STM图像,图像失真的性质和种类可能会使精确配准严重复杂化。在这里,我们演示了如何通过自动失真校正和多帧平均(MFA)来显着提高STM的分辨能力,并通过三个示例演示了这种方法的广泛用途。首先,我们显示了Si(111)-(7?×?7)重建的SNR的六倍增强。接下来,我们证明可以常规获得亚皮米级高度精度的图像,并显示在Au(111)上单层Ti2O3的图像。最后,我们展示了(4?×?4)重建的SrTiO3(111)表面的表面晶胞的两个手性变体的自动分类。我们对STM成像的新方法将允许从表面被埋藏在噪声中的大量结构和电子信息中提取。

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