2014
DOI: 10.1016/j.isprsjprs.2013.12.001
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An adaptive approach for the segmentation and extraction of planar and linear/cylindrical features from laser scanning data

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Cited by 68 publications
(45 citation statements)
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“…However, the majority of these techniques do not take the internal characteristics of laser scanning data-i.e., local point density variations and noise level in data-into account [8]. In order to overcome this limitation, an adaptive approach for the segmentation and extraction of planar surfaces, proposed by [46], is employed in this research. This approach is implemented while considering the possibility of application to multi-platform laser scanning datasets and considers local point density variations and random errors within datasets.…”
Section: Laser Scanning Data Segmentation and Planar Feature Extractionmentioning
confidence: 99%
See 1 more Smart Citation
“…However, the majority of these techniques do not take the internal characteristics of laser scanning data-i.e., local point density variations and noise level in data-into account [8]. In order to overcome this limitation, an adaptive approach for the segmentation and extraction of planar surfaces, proposed by [46], is employed in this research. This approach is implemented while considering the possibility of application to multi-platform laser scanning datasets and considers local point density variations and random errors within datasets.…”
Section: Laser Scanning Data Segmentation and Planar Feature Extractionmentioning
confidence: 99%
“…In this approach, the coordinates of normal projections of an arbitrary origin to the best-fitted planes to locally-classified planar neighborhoods are defined as segmentation attributes [46]. The coordinates of these attribute points are computed based on the precisely-estimated parameters representing these neighborhoods.…”
Section: Segmentation Attributes Computationmentioning
confidence: 99%
“…In this paper, the parameter-domain segmentation approach proposed by (Lari and Habib, 2014) is utilized for the extraction of planar regions from laser scanning data. In the first step of this segmentation approach, a Principal Component Analysis (PCA) of local neighborhoods of individual laser scanning points is performed to detect and model potential planar neighborhoods within the laser scanning point cloud (Pauly et al, 2002).…”
Section: Planar Features Segmentationmentioning
confidence: 99%
“…The proposed sequential clustering procedure is initiated in a two-dimensional directional attribute subspace. A brute-force peak detection approach (Lari and Habib, 2014) is then carried out to find clusters in directional attribute subspace, while considering the estimated clusters' extent ( Figure 5). For each of the detected clusters of attribute points in the directional attribute subspace (representing parallel pole-like features in the spatial domain), the clusters of attributes in the positional kd-tree structure are then identified to discriminate and extract individual pole-like features ( Figure 6).…”
Section: Parameter-domain Segmentation Of Pole-like Featuresmentioning
confidence: 99%