2019
DOI: 10.1017/s1431927619001648
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Deep-Learning Based Autofocus Score Prediction of Scanning Electron Microscope

Abstract: Although many autofocus (AF) algorithms have been proposed and compared in the literature [1], [2], none of the existing algorithms can work perfectly for images of a scanning electron microscope (SEM) in practice. This is because a simple mathematical scalar metric cannot perfectly capture the quality of images, especially for a variety of SEM samples, hardware specifications, measurement environment, and etc. In addition, a simple scalar AF metric cannot govern a variety of control parameters such as sharpne… Show more

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Cited by 9 publications
(16 citation statements)
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“…Therefore, we design a new deep neural network (DNN) architecture and data collection criteria to cope with all possible control parameters such as brightness, contrast, focus, and magnification. The proposed scheme shows more robust performance than the previous work [2] for a variety of magnification setups.…”
Section: Contribution Summarymentioning
confidence: 81%
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“…Therefore, we design a new deep neural network (DNN) architecture and data collection criteria to cope with all possible control parameters such as brightness, contrast, focus, and magnification. The proposed scheme shows more robust performance than the previous work [2] for a variety of magnification setups.…”
Section: Contribution Summarymentioning
confidence: 81%
“…Moreover, the proposed DNN architecture delivers further RMSE reduction (0.5732 to 0.4548) in case of the new dataset. Table 2 shows the RMSE performance of the existing AF algorithm [3], ResNet50 [2] with the new dataset, and the proposed DNN with the new dataset for different magnification setups. Although both ResNet50 and the proposed DNN suffer from performance degradation as the magnification increases, the proposed DNN relatively works well even in high magnification.…”
Section: Experiments Resultsmentioning
confidence: 99%
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