Tilt-based Aberration Estimation in Transmission Electron Microscopy
Jilles S. van Hulst, Erik M. Franken, Bart J. Janssen, W.P.M.H. Heemels, Duarte J. Antunes

TL;DR
This paper presents a novel tilt-based method using Kalman filtering and optimized tilt sequences to accurately estimate and compensate for aberrations in transmission electron microscopy, improving image quality.
Contribution
It introduces an offline optimized tilt pattern approach combined with EM for specimen-specific noise modeling, enhancing aberration estimation in TEM.
Findings
Optimized tilt patterns outperform naive approaches in aberration estimation.
The method achieves comparable or better image quality than Zemlin tableau.
The approach effectively models aberration drift and specimen-dependent noise.
Abstract
Transmission electron microscopes (TEMs) enable atomic-scale imaging but suffer from aberrations caused by lens imperfections and environmental conditions, reducing image quality. These aberrations can be compensated by adjusting electromagnetic lenses, but this requires accurate estimates of the aberration coefficients, which can drift over time. This paper introduces a method for the estimation of aberrations in TEM by leveraging the relationship between an induced tilt of the electron beam and the resulting image shift. The method uses a Kalman filter (KF) to estimate the aberration coefficients from a sequence of image shifts, while accounting for the drift of the aberrations over time. The applied tilt sequence is optimized by minimizing the trace of the predicted error covariance in the KF, which corresponds to the A-optimality criterion in experimental design. We show that this…
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