scholarly journals Next-Best-View planning for surface reconstruction of large-scale 3D environments with multiple UAVs

Author(s):  
Guillaume Hardouin ◽  
Julien Moras ◽  
Fabio Morbidi ◽  
Julien Marzat ◽  
El Mustapha Mouaddib
2020 ◽  
Vol 53 (2) ◽  
pp. 15501-15507
Author(s):  
Guillaume Hardouin ◽  
Fabio Morbidi ◽  
Julien Moras ◽  
Julien Marzat ◽  
El Mustapha Mouaddib

Author(s):  
Thomas Wiemann ◽  
Marcel Mrozinski ◽  
Dominik Feldschnieders ◽  
Kai Lingemann ◽  
Joachim Hertzberg

2020 ◽  
Vol 12 (13) ◽  
pp. 2169 ◽  
Author(s):  
Samuel Arce ◽  
Cory A. Vernon ◽  
Joshua Hammond ◽  
Valerie Newell ◽  
Joseph Janson ◽  
...  

Unsupervised machine learning algorithms (clustering, genetic, and principal component analysis) automate Unmanned Aerial Vehicle (UAV) missions as well as the creation and refinement of iterative 3D photogrammetric models with a next best view (NBV) approach. The novel approach uses Structure-from-Motion (SfM) to achieve convergence to a specified orthomosaic resolution by identifying edges in the point cloud and planning cameras that “view” the holes identified by edges without requiring an initial model. This iterative UAV photogrammetric method successfully runs in various Microsoft AirSim environments. Simulated ground sampling distance (GSD) of models reaches as low as 3.4 cm per pixel, and generally, successive iterations improve resolution. Besides analogous application in simulated environments, a field study of a retired municipal water tank illustrates the practical application and advantages of automated UAV iterative inspection of infrastructure using 63 % fewer photographs than a comparable manual flight with analogous density point clouds obtaining a GSD of less than 3 cm per pixel. Each iteration qualitatively increases resolution according to a logarithmic regression, reduces holes in models, and adds details to model edges.


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