Determining crystallographic orientation via hybrid convolutional neural network
Zihao Ding, Chaoyi Zhu, Marc De Graef
Abstract
A recent paradigm shift in the electron diffraction community has benefited from accessibility of large data sets and ever more complex designs of convolutional neural networks (CNNs). However, this shift from conventional feature engineering to analyzing high-level features extracted from CNN is often accompanied by a reduction in accuracy and sensitivity. Particularly, CNN based crystal orientation indexing using electron backscatter diffraction is sensitive to noise, reducing the overall accuracy. In this study, a new hybrid indexing approach has been developed to integrate dictionary indexing (DI) with a trained CNN to achieve extraordinary speed and robustness against noise simultaneously.
Topics & Concepts
Convolutional neural networkRobustness (evolution)Search engine indexingPattern recognition (psychology)Electron backscatter diffractionArtificial intelligenceMaterials scienceComputer scienceDiffractionArtificial neural networkOrientation (vector space)OpticsMathematicsPhysicsBiochemistryChemistryGeometryGeneMachine Learning in Materials ScienceX-ray Diffraction in CrystallographyNuclear Physics and Applications