Dynamic Atomic Column Detection in Transmission Electron Microscopy
Videos via Ridge Estimation
- URL: http://arxiv.org/abs/2302.00816v1
- Date: Thu, 2 Feb 2023 01:37:43 GMT
- Title: Dynamic Atomic Column Detection in Transmission Electron Microscopy
Videos via Ridge Estimation
- Authors: Yuchen Xu, Andrew M. Thomas, Peter A. Crozier, David S. Matteson
- Abstract summary: Ridge detection is a tool to extract curvilinear features in image processing.
We harness temporal correlation across frames through simultaneous analysis of long image sequences.
Our approach is specially tailored to handle temporal analysis of objects that seemingly vanish.
- Score: 4.345882429229813
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Ridge detection is a classical tool to extract curvilinear features in image
processing. As such, it has great promise in applications to material science
problems; specifically, for trend filtering relatively stable atom-shaped
objects in image sequences, such as Transmission Electron Microscopy (TEM)
videos. Standard analysis of TEM videos is limited to frame-by-frame object
recognition. We instead harness temporal correlation across frames through
simultaneous analysis of long image sequences, specified as a spatio-temporal
image tensor. We define new ridge detection algorithms to non-parametrically
estimate explicit trajectories of atomic-level object locations as a continuous
function of time. Our approach is specially tailored to handle temporal
analysis of objects that seemingly stochastically disappear and subsequently
reappear throughout a sequence. We demonstrate that the proposed method is
highly effective and efficient in simulation scenarios, and delivers notable
performance improvements in TEM experiments compared to other material science
benchmarks.
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