Combining gradient ascent search and support vector machines for effective autofocus of a field emission-scanning electron microscope

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TitreCombining gradient ascent search and support vector machines for effective autofocus of a field emission-scanning electron microscope
Type de publicationJournal Article
Year of Publication2016
AuteursDembele S., Lehmann O., Medjaher K., Marturi N., Piat N.
JournalJOURNAL OF MICROSCOPY
Volume264
Pagination79-87
Date PublishedOCT
Type of ArticleArticle
ISSN0022-2720
Mots-clésAutofocus, 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.

DOI10.1111/jmi.12419