Normal vectors are essential for many point cloud operations, including segmentation, reconstruction and rendering. The robust estimation of normal vectors from 3D range scans is a challenging task due to undersampling and noise, specially when combining points sampled from multiple sensor locations. Our error model assumes a Gaussian distribution of the range error with spatially-varying variances that depend on sensor distance and reflected intensity, mimicking the features of Lidar equipment. In this paper we study the impact of measurement errors on the covariance matrices of point neighborhoods. We show that covariance matrices of the true surface points can be estimated from those of the acquired points plus sensor-dependent direction...
As a common output format of sensors used for scanning real world environments, point clouds are a u...
Individual points produced by airborne laser scanning (ALS) may have large variation in their accura...
Obtaining 3D realistic models of urban scenes from accurate range data is nowadays an important rese...
Normal vectors are essential for many point cloud operations, including segmentation, reconstruction...
Position uncertainty is one of the most important quantities of an unorganised three- dimensional po...
scanning geometry Individual points produced by airborne laser scanning (ALS) may have large variati...
The contribution of the paper is two-fold: Firstly, a review of the point set registration literatur...
Shape measurements form powerful features for recognizing objects, and many imaging modalities produ...
This paper investigates the problems of outliers and/or noise in surface segmentation and proposes a...
Three dimensional point cloud data obtained from mobile laser scanning systems commonly contain outl...
We consider the problem of calibrating range measurements of a Light Detection and Ranging (lidar) s...
Laser scanners are used more and more in mobile mapping systems. They provide 3D point clouds that a...
ABSTRACT: Three-dimensional models are usually a severe simplification of the real world. Laser scan...
Scanning devices acquire geometric information from the surface of an object in the form of a 3D poi...
In this paper we describe and analyze a method based on local least square fitting for estimating th...
As a common output format of sensors used for scanning real world environments, point clouds are a u...
Individual points produced by airborne laser scanning (ALS) may have large variation in their accura...
Obtaining 3D realistic models of urban scenes from accurate range data is nowadays an important rese...
Normal vectors are essential for many point cloud operations, including segmentation, reconstruction...
Position uncertainty is one of the most important quantities of an unorganised three- dimensional po...
scanning geometry Individual points produced by airborne laser scanning (ALS) may have large variati...
The contribution of the paper is two-fold: Firstly, a review of the point set registration literatur...
Shape measurements form powerful features for recognizing objects, and many imaging modalities produ...
This paper investigates the problems of outliers and/or noise in surface segmentation and proposes a...
Three dimensional point cloud data obtained from mobile laser scanning systems commonly contain outl...
We consider the problem of calibrating range measurements of a Light Detection and Ranging (lidar) s...
Laser scanners are used more and more in mobile mapping systems. They provide 3D point clouds that a...
ABSTRACT: Three-dimensional models are usually a severe simplification of the real world. Laser scan...
Scanning devices acquire geometric information from the surface of an object in the form of a 3D poi...
In this paper we describe and analyze a method based on local least square fitting for estimating th...
As a common output format of sensors used for scanning real world environments, point clouds are a u...
Individual points produced by airborne laser scanning (ALS) may have large variation in their accura...
Obtaining 3D realistic models of urban scenes from accurate range data is nowadays an important rese...