Fast focus-based depth detection for manipulation in scanning electron microscopes

D. Jasper, S. Fatikow
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引用次数: 1

Abstract

To date, determining depth information for robotic handling in a scanning electron microscope is a challenging problem without a versatile solution. In this paper, focus-based as well as other depth detection methods are analyzed showing limitations in terms of accuracy and speed. To overcome these limitations, existing focus-based approaches are combined with a new line-scan based position tracking in order to increase both accuarcy and update rate. Using normalized variance as focus measure on each line scan results in well-defined focus curves. The depth from defocus approach exploits the linearity of the normalized variance for defocused objects to facilitate fast coarse positioning. The depth from focus approach determines the peak of the normalized variance during a focus sweep with high accuracy and enables fine positioning using a look-then-move methodology. For the first time, a z-alignment on the nanoscale is implemented solely relying on the SEM's focus information.
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用于扫描电子显微镜操作的快速聚焦深度检测
迄今为止,在扫描电子显微镜下确定机器人处理的深度信息是一个具有挑战性的问题,没有通用的解决方案。本文分析了基于焦点的深度检测方法以及其他深度检测方法在精度和速度方面的局限性。为了克服这些限制,现有的基于焦点的方法与新的基于线扫描的位置跟踪相结合,以提高精度和更新速度。将归一化方差作为每条线扫描的焦点度量,可以得到清晰的焦点曲线。离焦深度法利用了离焦物体归一化方差的线性,便于快速粗定位。焦点深度方法在焦点扫描期间以高精度确定归一化方差的峰值,并使用“先看后移动”方法实现精细定位。第一次,在纳米尺度上的z轴对准是完全依赖于扫描电镜的焦点信息实现的。
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