Scanning devices acquire geometric information from the surface of an object in the form of a 3D point set. Such point sets, as any data obtained by means of physical measurement, contain some noise. To create an accurate model of the scanned object, this noise should be resolved before or during the process of surface reconstruction. In this paper, we develop a statistical technique to estimate the noise in a scanned point set. The noise is represented as normal distributions with zero mean and their variances determine the amount of the noise. These distributions are estimated with a variational Bayesian method, which is known to provide more robust estimations than point estimate methods, such as maximum likelihood and maximum a posterio...
Abstract In this article, we present and discuss three statistical methods for Surface Reconstructio...
International audienceAdditive or multiplicative stationary noise recently became an important issue...
Abstract—This letter addresses an estimation problem based on blurred and noisy observations of text...
We present a Bayesian technique for the reconstruction and subsequent decimation of 3D surface model...
In this paper, we propose a novel surface reconstruction technique based on Bayesian statistics: The...
For statistical modeling, the model parameters are usually estimated by maximizing a probability mea...
Reconstructing an unknown curve or surface from sample points is an important task in geometric mode...
[[abstract]]©2004-Reconstructing an unknown curve or surface from sample points is an important task...
An interesting challenge in image processing is to classify shapes of polygons formed by selecting a...
Normal vectors are essential for many point cloud operations, including segmentation, reconstruction...
In this paper, we develop a method for robust filtering of a noisy set of points sampled from a smoo...
The inverse problem of estimating the spatial distributions of elastic material properties from nois...
Normal vectors are essential for many point cloud operations, including segmentation, reconstruction...
The contribution of the paper is two-fold: Firstly, a review of the point set registration literatur...
The paper addresses an estimation problem based on blurred and noisy observations of textured images...
Abstract In this article, we present and discuss three statistical methods for Surface Reconstructio...
International audienceAdditive or multiplicative stationary noise recently became an important issue...
Abstract—This letter addresses an estimation problem based on blurred and noisy observations of text...
We present a Bayesian technique for the reconstruction and subsequent decimation of 3D surface model...
In this paper, we propose a novel surface reconstruction technique based on Bayesian statistics: The...
For statistical modeling, the model parameters are usually estimated by maximizing a probability mea...
Reconstructing an unknown curve or surface from sample points is an important task in geometric mode...
[[abstract]]©2004-Reconstructing an unknown curve or surface from sample points is an important task...
An interesting challenge in image processing is to classify shapes of polygons formed by selecting a...
Normal vectors are essential for many point cloud operations, including segmentation, reconstruction...
In this paper, we develop a method for robust filtering of a noisy set of points sampled from a smoo...
The inverse problem of estimating the spatial distributions of elastic material properties from nois...
Normal vectors are essential for many point cloud operations, including segmentation, reconstruction...
The contribution of the paper is two-fold: Firstly, a review of the point set registration literatur...
The paper addresses an estimation problem based on blurred and noisy observations of textured images...
Abstract In this article, we present and discuss three statistical methods for Surface Reconstructio...
International audienceAdditive or multiplicative stationary noise recently became an important issue...
Abstract—This letter addresses an estimation problem based on blurred and noisy observations of text...