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Ass. Lect. Loutfia Karam Mohamad Mahmoud :: Publications:

Title:
3D model reconstruction from aerial ortho-imagery and LiDAR data
Authors: ElSonbaty Loutfia, Hamed Mahmoud, Ali Amr and Salah Mahmoud
Year: 2017
Keywords: 3D city model, LiDAR, Ortho-rectified aerial imagery, Data fusion, FCM, nDSM
Journal: journal of geomatics
Volume: 11
Issue: Not Available
Pages: Not Available
Publisher: indian society of geomatics
Local/International: International
Paper Link: Not Available
Full paper Loutfia Karam Mohamad Mahmoud_006.pdf
Supplementary materials Not Available
Abstract:

Three dimensional (3D) city model is an interesting research topic in the last decade. This is because achieving rapid, automatic and accurate extraction of a realistic model for the large urban area is still a challenge. Consequently, increasing the efficiency of 3D city modeling is required. The objective of this research is to develop a simple and efficient semi-automatic approach to generate a 3D city model for urban area using the fusion of LiDAR data and ortho-rectified imagery. These data sources provide efficiency for 3D building extraction. This approach uses both LiDAR and imagery data to delineate building outlines, based on fuzzy c-means clustering (FCM) algorithm. The third dimension is obtained automatically from the normalized digital surface model (nDSM) using spatial analyst tool. The 3D model is then generated using the multi-Faceted patch. The accuracy assessment for both height and building outlines is conducted referring to the ground truth and by means of visual inspection and different quantitative statistics. The results showed that the proposed approach can successfully detect different types of buildings from simple rectangle to circular shape and LOD2 (level of detail) is formed by including the roof structures in the model.

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