Elementary, my dear Zernike: model order reduction for accelerating optical dimensional microscopy

Dimensional microscopy is an essential tool for non-destructive and fast inspection of manufacturing processes. Standard approaches process only the measured images. By modelling the imaged structure and solving an inverse problem, the uncertainty on dimensional estimates can be reduced by orders of...

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Bibliographic Details
Published inEPJ Web of conferences Vol. 266; p. 10010
Main Authors Manley, Phillip, Krüger, Jan, Zschiedrich, Lin, Hammerschmidt, Martin, Bodermann, Bernd, Köning, Rainer, Schneider, Philipp-Immanuel
Format Journal Article
LanguageEnglish
Published EDP Sciences 2022
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Summary:Dimensional microscopy is an essential tool for non-destructive and fast inspection of manufacturing processes. Standard approaches process only the measured images. By modelling the imaged structure and solving an inverse problem, the uncertainty on dimensional estimates can be reduced by orders of magnitude. At the same time, the inverse problem needs to be solved in a timely manner. Here we present a method of accelerating the inverse problem by reducing images to their elementary features, thereby extracting the relevant information and distinguishing it from noise. The resulting reduction in complexity allows the inverse problem to be solved more efficiently by utilize cutting edge machine learning based optimization techniques. By employing the techniques presented here, we are able to perform for highly accurate and fast dimensional microscopy.
ISSN:2100-014X
2100-014X
DOI:10.1051/epjconf/202226610010