Several technologies provide datasets consisting of a large number of spatial points, commonly referred to as point-clouds. These point datasets provide spatial information regarding the phenomenon that is to be investigated, adding value through knowledge of forms and spatial relationships. Accurate methods for automatic outlier detection is a key step. In this note we use a completely open-source workflow to assess two outlier detection methods, statistical outlier removal (SOR) filter and local outlier factor (LOF) filter. The latter was implemented ex-novo for this work using the Point Cloud Library (PCL) environment. Source code is available in a GitHub repository for inclusion in PCL builds
Outlier detection in LiDAR point clouds is a necessary process before the subsequent modelling. So f...
Outlier detection, as a data mining task, is to identify a small set of data that is considerably di...
We propose to use a discriminative classifier for outlier detection in large-scale point clouds of c...
Several technologies provide datasets consisting of a large number of spatial points, commonly refer...
This paper provides an analysis of two machine learning algorithms, density-based spatial clustering...
Outlier detection in laser scanner point clouds is an essential process before the modelling step. H...
Spatial data are characterized by statistical units, with known geographical positions, on which non...
Local based approach is a major category of methods for spatial outlier detection (SOD). Currently, ...
This paper proposes a very effective method for data handling and preparation of the input 3D scans ...
Abstract: Outlier detection concerns discovering some unusual data whose behavior is exceptional com...
To obtain 3D information of the Earth’s surface, airborne LiDAR technologyis used to quickly capture...
Spatial data are characterized by statistical units, with known geographical positions, on which non...
This paper investigates outlier detection and reliable local saliency features (e.g. normal) estimat...
© 2017 A major task in spatio-temporal outlier detection is to identify objects that exhibit abnorma...
We propose to use a discriminative classifier for outlier detection in large-scale point clouds of c...
Outlier detection in LiDAR point clouds is a necessary process before the subsequent modelling. So f...
Outlier detection, as a data mining task, is to identify a small set of data that is considerably di...
We propose to use a discriminative classifier for outlier detection in large-scale point clouds of c...
Several technologies provide datasets consisting of a large number of spatial points, commonly refer...
This paper provides an analysis of two machine learning algorithms, density-based spatial clustering...
Outlier detection in laser scanner point clouds is an essential process before the modelling step. H...
Spatial data are characterized by statistical units, with known geographical positions, on which non...
Local based approach is a major category of methods for spatial outlier detection (SOD). Currently, ...
This paper proposes a very effective method for data handling and preparation of the input 3D scans ...
Abstract: Outlier detection concerns discovering some unusual data whose behavior is exceptional com...
To obtain 3D information of the Earth’s surface, airborne LiDAR technologyis used to quickly capture...
Spatial data are characterized by statistical units, with known geographical positions, on which non...
This paper investigates outlier detection and reliable local saliency features (e.g. normal) estimat...
© 2017 A major task in spatio-temporal outlier detection is to identify objects that exhibit abnorma...
We propose to use a discriminative classifier for outlier detection in large-scale point clouds of c...
Outlier detection in LiDAR point clouds is a necessary process before the subsequent modelling. So f...
Outlier detection, as a data mining task, is to identify a small set of data that is considerably di...
We propose to use a discriminative classifier for outlier detection in large-scale point clouds of c...