
Open access
Date
2019-12Type
- Journal Article
Abstract
In modern microscopy, the field of view is often increased by obtaining an image mosaic, where multiple sub-images are taken side-by-side and combined post-acquisition. Mosaic imaging often leads to long imaging times that can increase the probability of sample deformation during the acquisition due to, e.g. changes in the environment, damage caused by the radiation used to probe the sample or biologically induced deterioration. Here we propose a technique, based on local phase correlation, to detect the deformations and construct an artifact-free image mosaic from deformed sub-images. The implementation of the method supports distributed computing and can be used to generate teravoxel-size mosaics. We demonstrate its capabilities by assembling a 5.6 teravoxel tomographic image mosaic of microvasculature in whole mouse brain. The method is compared to existing rigid stitching implementations designed for very large datasets, and observed to create artifact-free image mosaics in comparable runtime with the same hardware resources. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000391774Publication status
publishedExternal links
Journal / series
BioinformaticsVolume
Pages / Article No.
Publisher
Oxford University PressOrganisational unit
03817 - Stampanoni, Marco F.M. / Stampanoni, Marco F.M.
Funding
135550 - In-vivo study of lung physiology with sub-second X-ray tomographic microscopy (SNF)
Notes
It was possible to publish this article open access thanks to a Swiss National Licence with the publisher.More
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