Sparsity-Based Super Resolution for SEM Images
Shahar Tsiper, Or Dicker, Idan Kaizerman, Zeev Zohar, Mordechai Segev, and Yonina C. Eldar

TL;DR
This paper introduces a sparsity-based super-resolution method for SEM images that enhances low-resolution images to match high-resolution quality, significantly improving scanning efficiency in microelectronics analysis.
Contribution
The paper presents a novel two-step sparse coding and dictionary learning approach for super-resolving SEM images, reducing scan time while maintaining high resolution.
Findings
Enhanced LR SEM images to HR quality using sparse coding.
Reduced noise and increased throughput in SEM imaging.
Effective on microelectronic chip images with similar structural features.
Abstract
The scanning electron microscope (SEM) 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, 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 sub-nanometer 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…
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