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Author, Editor

Author(s):

Ahmed, Naveed
Theobalt, Christian
Rössl, Christian
Thrun, Sebastian
Seidel, Hans-Peter

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Not MPG Author(s):

Rössl, Christian
Thrun, Sebastian

Editor(s):





BibTeX cite key*:

NaveedCVPR08a

Title, Booktitle

Title*:

Dense Correspondence Finding for Parametrization-free Animation Reconstruction from Video

Booktitle*:

IEEE Conference on Computer Vision and Pattern Recognition (CVPR 2008)

Event, URLs

URL of the conference:

http://vision.eecs.ucf.edu/

URL for downloading the paper:

http://www.mpi-inf.mpg.de/~nahmed/cvpr08a.pdf

Event Address*:

Anchorage, Alaska

Language:

English

Event Date*
(no longer used):


Organization:


Event Start Date:

24 June 2008

Event End Date:

26 June 2008

Publisher

Name*:

IEEE Computer Society

URL:

http://www.computer.org/

Address*:

Los Alamitos, USA

Type:


Vol, No, Year, pp.

Series:


Volume:


Number:


Month:


Pages:

1-8

Year*:

2008

VG Wort Pages:

??

ISBN/ISSN:


Sequence Number:


DOI:




Note, Abstract, ©


(LaTeX) Abstract:

We present a dense 3D correspondence finding method
that enables spatio-temporally coherent reconstruction of
surface animations from multi-view video data. Given as input
a sequence of shape-from-silhouette volumes of a moving
subject that were reconstructed for each time frame individually,
our method establishes dense surface correspondences
between subsequent shapes independently of surface
discretization. This is achieved in two steps: first, we obtain
sparse correspondences from robust optical features
between adjacent frames. Second, we generate dense correspondences
which serve as map between respective surfaces.
By applying this procedure subsequently to all pairs
of time steps we can trivially align one shape with all others.
Thus, the original input can be reconstructed as a sequence
of meshes with constant connectivity and small tangential
distortion. We exemplify the performance and accuracy of
our method using several synthetic and captured real-world
sequences.



Download
Access Level:

Public

Correlation

MPG Unit:

Max-Planck-Institut für Informatik



MPG Subunit:

Computer Graphics Group

Audience:

popular

Appearance:

MPII WWW Server, MPII FTP Server, MPG publications list, university publications list, working group publication list, Fachbeirat, VG Wort



BibTeX Entry:

@INPROCEEDINGS{NaveedCVPR08a,
AUTHOR = {Ahmed, Naveed and Theobalt, Christian and R{\"o}ssl, Christian and Thrun, Sebastian and Seidel, Hans-Peter},
TITLE = {Dense Correspondence Finding for Parametrization-free Animation Reconstruction from Video},
BOOKTITLE = {IEEE Conference on Computer Vision and Pattern Recognition (CVPR 2008)},
PUBLISHER = {IEEE Computer Society},
YEAR = {2008},
PAGES = {1--8},
ADDRESS = {Anchorage, Alaska},
}


Entry last modified by Naveed Ahmed, 02/12/2009
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Editor(s)
Christian Rössl
Created
03/27/2008 12:46:43 PM
Revisions
7.
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3.
Editor(s)
Naveed Ahmed
Naveed Ahmed
Naveed Ahmed
Ellen Fries
Ellen Fries
Edit Dates
02/12/2009 11:47:16 PM
02/12/2009 11:41:22 PM
02/12/2009 11:26:35 PM
02/11/2009 12:45:12 PM
02/10/2009 02:23:09 PM
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