Self-adapting denoising, alignment and reconstruction in electron tomography in materials science
An automatic procedure for electron tomography is presented. This procedure is adapted for specimens that can be fashioned into a needle-shaped sample and has been evaluated on inorganic samples. It consists of self-adapting denoising, automatic and accurate alignment including detection and correct...
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Veröffentlicht in: | Ultramicroscopy 2016-01, Vol.160, p.23-34 |
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Sprache: | eng |
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Zusammenfassung: | An automatic procedure for electron tomography is presented. This procedure is adapted for specimens that can be fashioned into a needle-shaped sample and has been evaluated on inorganic samples. It consists of self-adapting denoising, automatic and accurate alignment including detection and correction of tilt axis, and 3D reconstruction. We propose the exploitation of a large amount of information of an electron tomography acquisition to achieve robust and automatic mixed Poisson–Gaussian noise parameter estimation and denoising using undecimated wavelet transforms. The alignment is made by mixing three techniques, namely (i) cross-correlations between neighboring projections, (ii) common line algorithm to get a precise shift correction in the direction of the tilt axis and (iii) intermediate reconstructions to precisely determine the tilt axis and shift correction in the direction perpendicular to that axis. Mixing alignment techniques turns out to be very efficient and fast. Significant improvements are highlighted in both simulations and real data reconstructions of porous silicon in high angle annular dark field mode and agglomerated silver nanoparticles in incoherent bright field mode. 3D reconstructions obtained with minimal user-intervention present fewer artefacts and less noise, which permits easier and more reliable segmentation and quantitative analysis. After careful sample preparation and data acquisition, the denoising procedure, alignment and reconstruction can be achieved within an hour for a 3D volume of about a hundred million voxels, which is a step toward a more routine use of electron tomography.
•Goal: perform a reliable and user-independent 3D electron tomography reconstruction.•Proposed method: self-adapting denoising and alignment prior to 3D reconstruction.•Noise estimation and denoising are performed using wavelet transform.•Tilt axis determination is done automatically as well as projection alignment.•Procedure assessed on simulation and real data (porous Si and Ag nanoparticles). |
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ISSN: | 0304-3991 1879-2723 |
DOI: | 10.1016/j.ultramic.2015.09.007 |