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SSVM 2013 : Scale Space and Variational Methods in Computer Vision

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Conference Series : Scale Space and Variational Methods in Computer Vision
 
Link: http://www.gris.informatik.tu-darmstadt.de/ssvm2013
 
When Jun 2, 2013 - Jun 6, 2013
Where Leibnitz, Austria
Submission Deadline Dec 17, 2012
Notification Due Feb 15, 2013
Final Version Due Mar 2, 2013
Categories    image processing   mathematical imaging   computer vision   pattern recognition
 

Call For Papers

SSVM 2013
June 2nd - June 6th 2013
Schloss Seggau, Austria
http://www.gris.informatik.tu-darmstadt.de/ssvm2013/


We invite you to participate in the Fourth International Conference on Scale Space and Variational Methods in Computer Vision (SSVM). The conference will be held at the Schloss Seggau, Graz region, Austria, June 2nd - June 6th 2013.

This biannual conference series is a merger of the Scale Space conferences and the Variational Level Set Methods conference. The aim is to bring together two different communities with common research interests: the one on scale space analysis and the one on variational, geometric and level set methods and their applications in image interpretation and understanding.

Important Dates
Paper submission: 17th December 2012
Notification of acceptance: 15th February 2013
Deadline for camera ready paper: 2nd March 2013
Early registration: 2nd March 2013
Arrival: 2nd June 2013
Conference: 3rd June - 6th June 2013

Submissions
The submission page for the conference will be open soon. As is the tradition for this conference, we have a limited number of rooms available for conference participants. No admission is possible after the quota is full.

Typical conference topics cover
Image analysis
Scale space methods
Level set methods
PDEs in image processing
restoration and reconstruction
Inverse problems in imaging
Compressed sensing
Stereo reconstruction
Shape from X
Multi-Orientation Analysis
Perceptual grouping
Multi-scale shape analysis
Implicit surfaces
Wavelets and Image decompositions
Inpainting
Registration
Medical and other Applications
Surface modeling
3D vision
Optical flow
Tracking
Motion estimation
Segmentation
Denoising
Enhancement
Cross-scale structure
Sub-Riemannian geometry
Feature analysis
Selection of salient scales
Differential geometry and Invariants
Mathematics of novel imaging methods

Proceedings
Papers accepted for the conference will appear in the conference proceedings that will likely be published in Springer's Lecture Notes in Computer Science series (application pending). The proceedings will be available at the conference. Prospective authors are invited to submit a full-length twelve-page paper electronically via the SSVM'13 Paper Submission Web Page. All papers will undergo a double-blind peer-review procedure. At the conference the papers will be presented as posters or talks.



The SSVM'13 Organizing Committee,

Arjan Kuijper, TU Darmstadt & Fraunhofer IGD
Tom Pock, TU Graz
Kristian Bredies, Uni Graz
Horst Bischof, TU Graz

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