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Conférence internationale avec comité de lecture et actes
Article dans les actes
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Largest Silhouette-Equivalent Volume for 3D Shapes Modeling without Ghost Object
10/2008
(à paraître)
Dans Workshop on Multi-camera and Multi-modal Sensor Fusion Algorithms and Applications, In conjunction with ECCV 2008,
Marseille, France.
Audience : Internationale
Abstract
In this paper, we investigate a practical framework to compute a 3D shape estimation of multiple objects in real-time from silhouettes in multi-view environments. A popular method called Shape From
Silhouette (SF S), computes a 3D shape estimation from binary silhouette masks. This method has several limitations: The acquisition space is limited to the intersection of the camera viewing frusta ; SF S methods reconstruct some ghost objects which do not contain real objects,
especially when there are multiple real objects in the scene.
In this paper we propose two contributions to overcome these limitations.
First, using a new formulation of SF S approach, our system reconstructs
objects with no constraints on camera placement and their visibility.
Second, a new theoretical approach identifies and removes ghost objects.
The reconstructed shapes are more accurate than current silhouette-based approaches. Reconstructed parts are guaranteed to contain real
objects. Finally, we present a real-time system that captures multiple
and complex objects moving through many camera frusta to demonstrate
the application and robustness of our method.
BibTex
Télécharger
@InProceedings{Liris-3545,
title = {{Largest Silhouette-Equivalent Volume for 3D Shapes
Modeling without Ghost Object}},
author = {Brice {Michoud} and Saida {Bouakaz} and Erwan {Guillou}
and Hector {Briceno Pulido}},
year = {2008},
month = oct,
booktitle = {Workshop on Multi-camera and Multi-modal Sensor Fusion
Algorithms and Applications, In conjunction with ECCV 2008},
language = {en},
url = {http://liris.cnrs.fr/publis/?id=3545},
note = {}
}
Identifiant LIRIS : 3545

