scholarly journals Resolution enhancement in scanning electron microscopy using deep learning

2019 ◽  
Vol 9 (1) ◽  
Author(s):  
Kevin de Haan ◽  
Zachary S. Ballard ◽  
Yair Rivenson ◽  
Yichen Wu ◽  
Aydogan Ozcan
2021 ◽  
Vol 11 (1) ◽  
Author(s):  
Woojin Lee ◽  
Hyeong Soo Nam ◽  
Young Gon Kim ◽  
Yong Ju Kim ◽  
Jun Hee Lee ◽  
...  

AbstractScanning electron microscopy (SEM) is a high-resolution imaging technique with subnanometer spatial resolution that is widely used in materials science, basic science, and nanofabrication. However, conducting SEM is rather complex due to the nature of using an electron beam and the many parameters that must be adjusted to acquire high-quality images. Only trained operators can use SEM equipment properly, meaning that the use of SEM is restricted. To broaden the usability of SEM, we propose an autofocus method for a SEM system based on a dual deep learning network, which consists of an autofocusing-evaluation network (AENet) and an autofocusing-control network (ACNet). The AENet was designed to evaluate the quality of given images, with scores ranging from 0 to 9 regardless of the magnification. The ACNet can delicately control the focus of SEM online based on the AENet’s outputs for any lateral sample position and magnification. The results of these dual networks showed successful autofocus performance on three trained samples. Moreover, the robustness of the proposed method was demonstrated by autofocusing on unseen samples. We expect that our autofocusing system will not only contribute to expanding the versatility of SEM but will also be applicable to various microscopes.


2019 ◽  
Vol 25 (S2) ◽  
pp. 196-197 ◽  
Author(s):  
Tim Dahmen ◽  
Pavel Potocek ◽  
Patrick Trampert ◽  
Maurice Peemen ◽  
Remco Schoenmakers

2019 ◽  
Vol 25 (S2) ◽  
pp. 158-159 ◽  
Author(s):  
Patrick Trampert ◽  
Sabine Schlabach ◽  
Tim Dahmen ◽  
Philipp Slusallek

Nanomaterials ◽  
2021 ◽  
Vol 11 (12) ◽  
pp. 3305
Author(s):  
Li Fan ◽  
Zelin Wang ◽  
Yuxiang Lu ◽  
Jianguang Zhou

Scanning electron microscopy (SEM) plays a crucial role in the characterization of nanoparticles. Unfortunately, due to the limited resolution, existing imaging techniques are insufficient to display all detailed characteristics at the nanoscale. Hardware-oriented techniques are troubled with costs and material properties. Computational approaches often prefer blurry results or produce a less meaningful high-frequency noise. Therefore, we present a staged loss-driven neural networks model architecture to transform low-resolution SEM images into super-resolved ones. Our approach consists of two stages: first, residual channel attention network (RCAN) with mean absolute error (MAE) loss was used to get a better peak signal-to-noise ratio (PSNR). Then, discriminators with adversarial losses were activated to reconstruct high-frequency texture features. The quantitative and qualitative evaluation results indicate that compared with other advanced approaches, our model achieves satisfactory results. The experiment in AgCl@Ag for photocatalytic degradation confirms that our proposed method can bring realistic high-frequency structural detailed information rather than meaningless noise. With this approach, high-resolution SEM images can be acquired immediately without sample damage. Moreover, it provides an enhanced characterization method for further directing the preparation of nanoparticles.


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