Probabilistic 3D Occupancy Flow with Latent Silhouette Cues
In Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition - 2010
In this paper we investigate shape and motion retrieval in
the context of multi-camera systems. We propose a new lowlevel
analysis based on latent silhouette cues, particularly
suited for low-texture and outdoor datasets. Our analysis
does not rely on explicit surface representations, instead using
an EM framework to simultaneously update a set of volumetric
voxel occupancy probabilities and retrieve a best
estimate of the dense 3D motion field from the last consecutively
observed multi-view frame set. As the framework uses
only latent, probabilistic silhouette information, the method
yields a promising 3D scene analysis method robust to many
sources of noise and arbitrary scene objects. It can be used
as input for higher level shape modeling and structural inference
tasks. We validate the approach and demonstrate its
practical use for shape and motion analysis experimentally.
Images and movies
BibTex references
@InProceedings\{GFBP10,
author = "Guan, Li and Franco, Jean-S\'ebastien and Boyer, Edmond and Pollefeys, Marc",
title = "Probabilistic 3D Occupancy Flow with Latent Silhouette Cues",
booktitle = "In Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition",
year = "2010",
url = "http://perception.inrialpes.fr/Publications/2010/GFBP10"
}
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