We present a Bayesian technique for the reconstruction and subsequent decimation of 3D surface models from noisy sensor data. The method uses oriented probabilistic models of the measurement noise and combines them with feature-enhancing prior probabilities over 3D surfaces. When applied to surface reconstruction, the method simultaneously smooths noisy regions while enhancing features such as corners. When applied to surface decimation, it finds models that closely approximate the original mesh when rendered. The method is applied in the context of computer animation where it finds decimations that minimize the visual error even under nonrigid deformations
International audienceThis paper considers the problem of automatically recovering temporally consis...
International audienceThis paper considers the problem of automatically recovering temporally consis...
It’s common experience for human vision to perceive full 3D shape and scene from a single 2D image w...
In this paper, we propose a novel surface reconstruction technique based on Bayesian statistics: The...
In this article, we present and discuss three statistical methods for Surface Reconstruction. A typi...
Abstract In this article, we present and discuss three statistical methods for Surface Reconstructio...
Scanning devices acquire geometric information from the surface of an object in the form of a 3D poi...
In applying optical methods for automated 3D indoor modelling, the 3D reconstruction of objects and...
This paper introduces a novel technique for joint surface reconstruction and registration. Given a s...
AbstractWe present an algorithm for surface reconstruction in presence of noise. We show that, under...
Reconstructing an unknown curve or surface from sample points is an important task in geometric mode...
It's common experience for human vision to perceive full 3D shape and scene from a single 2D image w...
[[abstract]]©2004-Reconstructing an unknown curve or surface from sample points is an important task...
Abstract This paper considers the problem of auto-matically recovering temporally consistent animate...
The problem of visible surface estimation for image-based rendering is tackled using a new approach,...
International audienceThis paper considers the problem of automatically recovering temporally consis...
International audienceThis paper considers the problem of automatically recovering temporally consis...
It’s common experience for human vision to perceive full 3D shape and scene from a single 2D image w...
In this paper, we propose a novel surface reconstruction technique based on Bayesian statistics: The...
In this article, we present and discuss three statistical methods for Surface Reconstruction. A typi...
Abstract In this article, we present and discuss three statistical methods for Surface Reconstructio...
Scanning devices acquire geometric information from the surface of an object in the form of a 3D poi...
In applying optical methods for automated 3D indoor modelling, the 3D reconstruction of objects and...
This paper introduces a novel technique for joint surface reconstruction and registration. Given a s...
AbstractWe present an algorithm for surface reconstruction in presence of noise. We show that, under...
Reconstructing an unknown curve or surface from sample points is an important task in geometric mode...
It's common experience for human vision to perceive full 3D shape and scene from a single 2D image w...
[[abstract]]©2004-Reconstructing an unknown curve or surface from sample points is an important task...
Abstract This paper considers the problem of auto-matically recovering temporally consistent animate...
The problem of visible surface estimation for image-based rendering is tackled using a new approach,...
International audienceThis paper considers the problem of automatically recovering temporally consis...
International audienceThis paper considers the problem of automatically recovering temporally consis...
It’s common experience for human vision to perceive full 3D shape and scene from a single 2D image w...