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Computer Vision-aided Atom Tracking in STEM Imaging

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arxiv 1809.05076 v1 pith:NNZG3UQX submitted 2018-09-13 cs.CV

Computer Vision-aided Atom Tracking in STEM Imaging

classification cs.CV
keywords atomstemcomputerdataaddressalgorithmsanalysisatomically
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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To address the SMC'17 data challenge -- "Data mining atomically resolved images for material properties", we first used the classic "blob detection" algorithms developed in computer vision to identify all atom centers in each STEM image frame. With the help of nearest neighbor analysis, we then found and labeled every atom center common to all the STEM frames and tracked their movements through the given time interval for both Molybdenum or Selenium atoms.

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