Applied Materials , 9 Oppenheimer St., Rehovot 76705, Israel.
Nano Lett. 2017 Sep 13;17(9):5437-5445. doi: 10.1021/acs.nanolett.7b02091. Epub 2017 Aug 29.
The scanning electron microscope (SEM) is an electron microscope that produces an image of a sample by scanning it with a focused beam of electrons. The electrons interact with the atoms in the sample, which emit secondary electrons that contain information about the surface topography and composition. The sample is scanned by the electron beam point by point, until an image of the surface is formed. Since its invention in 1942, the capabilities of SEMs have become paramount in the discovery and understanding of the nanometer world, and today it is extensively used for both research and in industry. In principle, SEMs can achieve resolution better than one nanometer. However, for many applications, working at subnanometer resolution implies an exceedingly large number of scanning points. For exactly this reason, the SEM diagnostics of microelectronic chips is performed either at high resolution (HR) over a small area or at low resolution (LR) while capturing a larger portion of the chip. Here, we employ sparse coding and dictionary learning to algorithmically enhance low-resolution SEM images of microelectronic chips-up to the level of the HR images acquired by slow SEM scans, while considerably reducing the noise. Our methodology consists of two steps: an offline stage of learning a joint dictionary from a sequence of LR and HR images of the same region in the chip, followed by a fast-online super-resolution step where the resolution of a new LR image is enhanced. We provide several examples with typical chips used in the microelectronics industry, as well as a statistical study on arbitrary images with characteristic structural features. Conceptually, our method works well when the images have similar characteristics, as microelectronics chips do. This work demonstrates that employing sparsity concepts can greatly improve the performance of SEM, thereby considerably increasing the scanning throughput without compromising on analysis quality and resolution.
扫描电子显微镜(SEM)是一种电子显微镜,通过用聚焦电子束扫描样品来产生样品的图像。电子与样品中的原子相互作用,发射出包含表面形貌和成分信息的二次电子。通过电子束逐点扫描样品,直到形成表面的图像。自 1942 年发明以来,SEM 的功能在发现和理解纳米世界方面变得至关重要,如今它广泛用于研究和工业。原则上,SEM 可以实现优于 1 纳米的分辨率。然而,对于许多应用,在亚纳米分辨率下工作意味着需要扫描非常多的点。正是出于这个原因,微电子芯片的 SEM 诊断要么在小面积上进行高分辨率 (HR),要么在捕获芯片更大部分时进行低分辨率 (LR)。在这里,我们采用稀疏编码和字典学习算法来增强微电子芯片的低分辨率 SEM 图像,使其达到由慢速 SEM 扫描获得的 HR 图像的水平,同时大大降低噪声。我们的方法包括两个步骤:从芯片同一区域的一系列 LR 和 HR 图像中学习联合字典的离线阶段,以及快速在线超分辨率阶段,其中新的 LR 图像的分辨率得到增强。我们提供了几个具有微电子工业中典型芯片的示例,以及对具有特征结构特征的任意图像的统计研究。从概念上讲,当图像具有相似的特征时,我们的方法效果很好,就像微电子芯片一样。这项工作表明,采用稀疏性概念可以极大地提高 SEM 的性能,从而在不影响分析质量和分辨率的情况下大大提高扫描吞吐量。