Combining gradient ascent search and support vector machines for effective autofocus of a field emission-scanning electron microscope
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Titre | Combining gradient ascent search and support vector machines for effective autofocus of a field emission-scanning electron microscope |
Type de publication | Journal Article |
Year of Publication | 2016 |
Auteurs | Dembele S., Lehmann O., Medjaher K., Marturi N., Piat N. |
Journal | JOURNAL OF MICROSCOPY |
Volume | 264 |
Pagination | 79-87 |
Date Published | OCT |
Type of Article | Article |
ISSN | 0022-2720 |
Mots-clés | Autofocus, gradient ascent search, Machine learning, normalized variance, Scanning electron microscopy, support vector machines regression |
Résumé | Autofocus is an important issue in electron microscopy, particularly at high magnification. It consists in searching for sharp image of a specimen, that is corresponding to the peak of focus. The paper presents a machine learning solution to this issue. From seven focus measures, support vector machines fitting is used to compute the peak with an initial guess obtained from a gradient ascent search, that is search in the direction of higher gradient of focus. The solution is implemented on a Carl Zeiss Auriga FE-SEM with a three benchmark specimen and magnification ranging from x300 to x160 000. Based on regularized nonlinear least squares optimization, the solution overtakes the literature nonregularized search and Fibonacci search methods: accuracy improvement ranges from 1.25 to 8 times, fidelity improvement ranges from 1.6 to 28 times, and speed improvement ranges from 1.5 to 4 times. Moreover, the solution is practical by requiring only an off-line easy automatic train with cross-validation of the support vector machines. |
DOI | 10.1111/jmi.12419 |