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Registration of serial sections: An evaluation method based on distortions of the ground truths

2020-11-22 16:50:52
Oleg Lobachev, Takuya Funatomi, Alexander Pfaffenroth, Reinhold Förster, Lars Knudsen, Christoph Wrede, Michael Guthe, David Haberthür, Ruslan Hlushchuk, Thomas Salaets, Jaan Toelen, Simone Gaffling, Christian Mühlfeld, Roman Grothausmann

Abstract

Registration of histological serial sections is a challenging task. Serial sections exhibit distortions from sectioning. Missing information on how the tissue looked before cutting makes a realistic validation of 2D registrations impossible. This work proposes methods for more realistic evaluation of registrations. Firstly, we survey existing registration and validation efforts. Secondly, we present a methodology to generate test data for registrations. We distort an innately registered image stack in the manner similar to the cutting distortion of serial sections. Test cases are generated from existing 3D data sets, thus the ground truth is known. Thirdly, our test case generation premises evaluation of the registrations with known ground truths. Our methodology for such an evaluation technique distinguishes this work from other approaches. We present a full-series evaluation across six different registration methods applied to our distorted 3D data sets of animal lungs. Our distorted and ground truth data sets are made publicly available.

Abstract (translated)

URL

https://arxiv.org/abs/2011.11060

PDF

https://arxiv.org/pdf/2011.11060.pdf


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