4.7 Article

Integrating UAV and Ground Panoramic Images for Point Cloud Analysis of Damaged Building

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/LGRS.2020.3048150

Keywords

Buildings; Usability; Cameras; Unmanned aerial vehicles; Three-dimensional displays; Lenses; Data collection; 3-D point clouds (3DPCs); earthquake-damaged building; panoramic image; unmanned aerial vehicle (UAV)

Funding

  1. Ministry of Science and Technology (MOST) [108-2917I-564-015]

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The effectiveness of damaged building investigation relies on rapid data collection, using UAV and a backpack panoramic imaging system for recording damage status comprehensively. Integrating these for generating complete 3D point clouds is crucial for 3D measurement of damaged areas. This study evaluates the impact of using panoramic images and multiview aerial images for 3D mapping, highlighting the necessity of integrating both for rapid and complete point cloud generation.
The effectiveness of damaged building investigation relies on rapid data collection, while jointly applying an unmanned aerial vehicle (UAV) and a backpack panoramic imaging system can quickly and comprehensively record the damage status. Meanwhile, integrating them for generating complete 3-D point clouds (3DPCs) is important for further assisting the 3-D measurement of the damaged areas. During the 2016 Meinong earthquake (Taiwan), the system collected multiview aerial images (MVAIs) and ground panoramic images of two collapsed buildings. However, due to the spatial offsets of the spherical camera result in nonideal panoramic images (NIPIs), an appropriate spherical radius has to be chosen to reduce the distance-related stitching errors. In order to evaluate the impact of using NIPIs for 3-D mapping, the geometric accuracy of the 3-D scene reconstruction (3DSR) and usability of the 3DPCs were assessed. This study introduces the stitching errors of panoramic images, uses sky masks for successful 3DSR, and obtains clean point clouds. It then analyzes the usability of point clouds that were obtained from only NIPIs, only MVAIs, and their integration. The analysis shows that NIPIs have more rapid processing efficiency than their unstitched original images and can increase the completeness of point clouds at the building's lower floor, while MVAIs can reduce the stitching errors of NIPIs to an acceptable range. Therefore, integrating both images is necessary to achieve rapid and complete point cloud generation.

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