Dynamic 3D Network Design for UAV Based Photogrammetry in mountainous terrain

Author:

Gargari Ali Mahdinezhad1,Ebadi Hamid1,Esmaeili Farid2,Latifzadeh Sahar1

Affiliation:

1. K.N.Toosi University of Technology

2. Zanjan Branch, Islamic Azad University, Zanjan, Iran

Abstract

Abstract Topographic mapping in mountainous areas encounters many challenges due to the potential impasse and lack of access to all locations. Unmanned Aerial Vehicles (UAVs) are an effective alternative to traditional field mapping in different environmental conditions. However, problems such as large-scale differences, gaps, and errors due to extreme elevation differences in these areas, hinders the use of UAV-based photogrammetry, thus reducing the quality and accuracy of the photogrammetric products and the final extracted map in mountainous areas. By designing an optimal flight network before UAV acquisition, the effect of these problems can be reduced. This paper proposes a method for planning the dynamic three-dimensional Imaging Network UAV in mountainous terrain based on digital elevation model (DEM) to ensure the uniformity of the scale in the photogrammetric blocks, avoid collision with obstacles, also gaps or data redundancy. The proposed method was implemented in a semi-mountainous area and the results showed that the large-scale changes among the images were reduced and the GSD was maintained as constant as possible. Also, planning UAV flight program based on the proposed algorithm increases the accuracy of the photogrammetric products.

Publisher

Research Square Platform LLC

Reference25 articles.

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