New Methods to Improve Large-Scale Microscopy Image Analysis with Prior Knowledge and Uncertainty

08/30/2016
by   Johannes Stegmaier, et al.
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Multidimensional imaging techniques provide powerful ways to examine various kinds of scientific questions. The routinely produced datasets in the terabyte-range, however, can hardly be analyzed manually and require an extensive use of automated image analysis. The present thesis introduces a new concept for the estimation and propagation of uncertainty involved in image analysis operators and new segmentation algorithms that are suitable for terabyte-scale analyses of 3D+t microscopy images.

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