<div><p>Outlier removal is a fundamental data processing task to ensure the quality of scanned point cloud data (PCD), which is becoming increasing important in industrial applications and reverse engineering. Acquired scanned PCD is usually noisy, sparse and temporarily incoherent. Thus the processing of scanned data is typically an ill-posed problem. In the paper, we present a simple and effective method based on two geometrical characteristics constraints to trim the noisy points. One of the geometrical characteristics is the local density information and another is the deviation from the local fitting plane. The local density based method provides a preprocessing step, which could remove those sparse outlier and isolated outlier. The no...
Abstract—A method for modeling and removing outliers from 2-D sets of scattered points is presented....
Three dimensional point cloud data acquired from mobile laser scanning system commonly contain outli...
Measurement outliers are easily caused by illumination, surface texture, human factors and so on dur...
Outlier removal is a fundamental data processing task to ensure the quality of scanned point cloud d...
The emergence of laser/LiDAR sensors, reliable multi-view stereo techniques and more recently consum...
Outlier detection in laser scanner point clouds is an essential process before the modelling step. H...
3D scanners have become widely used in many industrial applications in reverse engineering, quality ...
This paper investigates outlier detection and reliable local saliency features (e.g. normal) estimat...
Abstract — Unorganized point clouds obtained from 3D shape acquisition devices usually present noise...
To obtain 3D information of the Earth’s surface, airborne LiDAR technologyis used to quickly capture...
This paper proposes a very effective method for data handling and preparation of the input 3D scans ...
We present a new regularization method to find structure in point clouds corrupted by outliers. The ...
Several technologies provide datasets consisting of a large number of spatial points, commonly refer...
Outlier detection in LiDAR point clouds is a necessary process before the subsequent modelling. So f...
Wolff K, Kim C, Zimmer H, et al. Point Cloud Noise and Outlier Removal for Image-Based 3D Reconstruc...
Abstract—A method for modeling and removing outliers from 2-D sets of scattered points is presented....
Three dimensional point cloud data acquired from mobile laser scanning system commonly contain outli...
Measurement outliers are easily caused by illumination, surface texture, human factors and so on dur...
Outlier removal is a fundamental data processing task to ensure the quality of scanned point cloud d...
The emergence of laser/LiDAR sensors, reliable multi-view stereo techniques and more recently consum...
Outlier detection in laser scanner point clouds is an essential process before the modelling step. H...
3D scanners have become widely used in many industrial applications in reverse engineering, quality ...
This paper investigates outlier detection and reliable local saliency features (e.g. normal) estimat...
Abstract — Unorganized point clouds obtained from 3D shape acquisition devices usually present noise...
To obtain 3D information of the Earth’s surface, airborne LiDAR technologyis used to quickly capture...
This paper proposes a very effective method for data handling and preparation of the input 3D scans ...
We present a new regularization method to find structure in point clouds corrupted by outliers. The ...
Several technologies provide datasets consisting of a large number of spatial points, commonly refer...
Outlier detection in LiDAR point clouds is a necessary process before the subsequent modelling. So f...
Wolff K, Kim C, Zimmer H, et al. Point Cloud Noise and Outlier Removal for Image-Based 3D Reconstruc...
Abstract—A method for modeling and removing outliers from 2-D sets of scattered points is presented....
Three dimensional point cloud data acquired from mobile laser scanning system commonly contain outli...
Measurement outliers are easily caused by illumination, surface texture, human factors and so on dur...