| Literature DB >> 26291960 |
A Perasso1, C Toraci2, A M Massone1, M Piana1,3, A Gerbi1, R Buzio1, S Kawale1, E Bellingeri1, C Ferdeghini1.
Abstract
We describe a computational approach for the automatic recognition and classification of atomic species in scanning tunnelling microscopy images. The approach is based on a pipeline of image processing methods in which the classification step is performed by means of a Fuzzy Clustering algorithm. As a representative example, we use the computational tool to characterize the nanoscale phase separation in thin films of the Fe-chalcogenide superconductor FeSex Te1-x , starting from synthetic data sets and experimental topographies. We quantify the stoichiometry fluctuations on length scales from tens to a few nanometres.Entities:
Keywords: Atoms; fuzzy clustering; image analysis; iron-chalcogenide; pattern recognition; scanning tunnelling microscopy; superconductors; thin films
Year: 2015 PMID: 26291960 DOI: 10.1111/jmi.12297
Source DB: PubMed Journal: J Microsc ISSN: 0022-2720 Impact factor: 1.758