4.4 Article

Image registration of low signal-to-noise cryo-STEM data

Journal

ULTRAMICROSCOPY
Volume 191, Issue -, Pages 56-65

Publisher

ELSEVIER SCIENCE BV
DOI: 10.1016/j.ultramic.2018.04.008

Keywords

Scanning Transmission Electron Microscopy (STEM); Cryogenic STEM (cryo-STEM); Rigid registration; Image reconstruction; Atomic Resolution; Low signal-to-noise ratio (SNR)

Categories

Funding

  1. National Sciences Foundation, through the PARADIM Materials Innovation Platform [DMR-1539918]
  2. NSF GRFP [DGE-1144153]
  3. Center for Bright Beams graduate research fellowship [PHY-1549132]
  4. NSF MRSEC program [DMR-1719875]
  5. Department of Defense Air Force Office of Scientific Research [FA 9550-16-1-0305]
  6. Cornell University
  7. Weill Institute
  8. Kavli Institute at Cornell
  9. Gordon and Betty Moore Foundation's EPiQS Initiative [GBMF4413]
  10. Division of Materials Science and Engineering, U.S. DOE, BES
  11. U.S. DOE, BES [DE-AC02-06CH11357]
  12. [NSF-MRI-1429155]

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Combining multiple fast image acquisitions to mitigate scan noise and drift artifacts has proven essential for picometer precision, quantitative analysis of atomic resolution scanning transmission electron microscopy (STEM) data. For very low signal-to-noise ratio (SNR) image stacks - frequently required for undistorted imaging at liquid nitrogen temperatures - image registration is particularly delicate, and standard approaches may either fail, or produce subtly specious reconstructed lattice images. We present an approach which effectively registers and averages image stacks which are challenging due to their low-SNR and propensity for unit cell misalignments. Registering all possible image pairs in a multi-image stack leads to significant information surplus. In combination with a simple physical picture of stage drift, this enables identification of incorrect image registrations, and determination of the optimal image shifts from the complete set of relative shifts. We demonstrate the effectiveness of our approach on experimental, cryogenic STEM datasets, highlighting subtle artifacts endemic to low-SNR lattice images and how they can be avoided. High-SNR average images with information transfer out to 0.72 angstrom are achieved at 300 kV and with the sample cooled to near liquid nitrogen temperature. (C) 2018 Elsevier B.V. All rights reserved.

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