Reconstructing Sinus Anatomy from Endoscopic Video -- Towards a
Radiation-free Approach for Quantitative Longitudinal Assessment
- URL: http://arxiv.org/abs/2003.08502v2
- Date: Fri, 3 Jul 2020 03:34:07 GMT
- Title: Reconstructing Sinus Anatomy from Endoscopic Video -- Towards a
Radiation-free Approach for Quantitative Longitudinal Assessment
- Authors: Xingtong Liu, Maia Stiber, Jindan Huang, Masaru Ishii, Gregory D.
Hager, Russell H. Taylor, Mathias Unberath
- Abstract summary: Reconstructing accurate 3D surface models of sinus anatomy directly from an endoscopic video is a promising avenue for cross-sectional and longitudinal analysis.
We present a patient-specific, learning-based method for 3D reconstruction of sinus surface anatomy directly and only from endoscopic videos.
- Score: 23.54387940230938
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Reconstructing accurate 3D surface models of sinus anatomy directly from an
endoscopic video is a promising avenue for cross-sectional and longitudinal
analysis to better understand the relationship between sinus anatomy and
surgical outcomes. We present a patient-specific, learning-based method for 3D
reconstruction of sinus surface anatomy directly and only from endoscopic
videos. We demonstrate the effectiveness and accuracy of our method on in and
ex vivo data where we compare to sparse reconstructions from Structure from
Motion, dense reconstruction from COLMAP, and ground truth anatomy from CT. Our
textured reconstructions are watertight and enable measurement of clinically
relevant parameters in good agreement with CT. The source code is available at
https://github.com/lppllppl920/DenseReconstruction-Pytorch.
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