Target Localization for Autonomous Landing Site Detection: A Review and Preliminary Result with Static Image Photogrammetry

Author:

Subramanian Jayasurya Arasur1ORCID,Asirvadam Vijanth Sagayan1ORCID,Zulkifli Saiful Azrin B. M.1ORCID,Sawaran Singh Narinderjit Singh2,Shanthi N.3,Lagisetty Ravi Kumar4

Affiliation:

1. Electrical and Electronics Engineering, Universiti Teknologi PETRONAS, Seri Iskandar 32610, Malaysia

2. Faculty of Data Science and Information Technology, INTI International University, Persiaran Perdana BBN, Putra Nilai, Nilai 71800, Malaysia

3. Department of Computer Science and Engineering, Kongu Engineering College, Erode 638052, India

4. Indian Space Research Organization, Bangalore 560094, India

Abstract

The advancement of autonomous technology in Unmanned Aerial Vehicles (UAVs) has piloted a new era in aviation. While UAVs were initially utilized only for the military, rescue, and disaster response, they are now being utilized for domestic and civilian purposes as well. In order to deal with its expanded applications and to increase autonomy, the ability for UAVs to perform autonomous landing will be a crucial component. Autonomous landing capability is greatly dependent on computer vision, which offers several advantages such as low cost, self-sufficiency, strong anti-interference capability, and accurate localization when combined with an Inertial Navigation System (INS). Another significant benefit of this technology is its compatibility with LiDAR technology, Digital Elevation Models (DEM), and the ability to seamlessly integrate these components. The landing area for UAVs can vary, ranging from static to dynamic or complex, depending on their environment. By comprehending these characteristics and the behavior of UAVs, this paper serves as a valuable reference for autonomous landing guided by computer vision and provides promising preliminary results with static image photogrammetry.

Publisher

MDPI AG

Subject

Artificial Intelligence,Computer Science Applications,Aerospace Engineering,Information Systems,Control and Systems Engineering

Reference94 articles.

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2. Iiyama, K., Tomita, K., Jagatia, B.A., Nakagawa, T., and Ho, K. (2021). Deep reinforcement learning for safe landing site selection with concurrent consideration of divert maneuvers. arXiv.

3. Skinner, K.A., Tomita, K., and Ho, K. (2021, January 1–4). Uncertainty-aware deep learning for safe landing site selection. Proceedings of the AAS/AIAA Space Flight Mechanics Meeting 2021, Virtual.

4. Deep learning enabled localization for UAV autolanding;Minghui;Chin. J. Aeronaut.,2021

5. Deep learning for vision-based micro aerial vehicle autonomous landing;Yu;Int. J. Micro Air Veh.,2018

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