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MVR3D 2017 : ICCV Workshop on Multiview Relationships in 3D Data

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Link: https://mvr3d.github.io/
 
When Oct 29, 2017 - Oct 29, 2017
Where Venice
Submission Deadline Jul 24, 2017
Notification Due Aug 18, 2017
Final Version Due Aug 23, 2017
Categories    3d vision   computer vision   machine learning   geometry
 

Call For Papers

The goal of this workshop is to push the frontier in the area of global multi-scan alignment. Focal points for discussions and solicited submissions include but are not limited to:
Global point cloud alignment
Multiview registration using scene priors
Learning methods for multiview correspondence estimation
3D Object reconstruction from multiple views
Joint registration and segmentation of multiple scans
Joint matching of multiple non-rigid surfaces
Multiview object detection
Multi-object Instance reconstruction
Feature descriptors for multiview 3D matching
Multiview pose estimation
Joint processing of multiple point clouds
Pose averaging and error diffusion on graphs
Multiview stitching of 3D scans on mobile and embedded devices
Practical applications of multiple scan registration on large scale settings
Datasets and dataset methods for ground truth acquisition
An official call-for-papers is found here:
https://mvr3d.github.io/downloads/mvr3d-call-for-papers.pdf

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