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Applying shot boundary detection for automated crystal growth analysis during in situ transmission electron microscope experiments.

W A MoegleinR GriswoldB L MehdiN D BrowningJeremy Teuton
Published in: Advanced structural and chemical imaging (2017)
In situ scanning transmission electron microscopy is being developed for numerous applications in the study of nucleation and growth under electrochemical driving forces. For this type of experiment, one of the key parameters is to identify when nucleation initiates. Typically, the process of identifying the moment that crystals begin to form is a manual process requiring the user to perform an observation and respond accordingly (adjust focus, magnification, translate the stage, etc.). However, as the speed of the cameras being used to perform these observations increases, the ability of a user to "catch" the important initial stage of nucleation decreases (there is more information that is available in the first few milliseconds of the process). Here, we show that video shot boundary detection can automatically detect frames where a change in the image occurs. We show that this method can be applied to quickly and accurately identify points of change during crystal growth. This technique allows for automated segmentation of a digital stream for further analysis and the assignment of arbitrary time stamps for the initiation of processes that are independent of the user's ability to observe and react.
Keyphrases
  • electron microscopy
  • deep learning
  • machine learning
  • label free
  • high throughput
  • healthcare
  • gold nanoparticles
  • real time pcr
  • high resolution
  • simultaneous determination