Visual Environment Assessment for Safe Autonomous Quadrotor Landing
- URL: http://arxiv.org/abs/2311.10065v3
- Date: Fri, 3 May 2024 15:25:54 GMT
- Title: Visual Environment Assessment for Safe Autonomous Quadrotor Landing
- Authors: Mattia Secchiero, Nishanth Bobbili, Yang Zhou, Giuseppe Loianno,
- Abstract summary: We present a novel approach for detection and assessment of potential landing sites for safe quadrotor landing.
Our solution efficiently integrates 2D and 3D environmental information, eliminating the need for external aids such as GPS.
Our approach runs in real-time on quadrotors equipped with limited computational capabilities.
- Score: 8.538463567092297
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Autonomous identification and evaluation of safe landing zones are of paramount importance for ensuring the safety and effectiveness of aerial robots in the event of system failures, low battery, or the successful completion of specific tasks. In this paper, we present a novel approach for detection and assessment of potential landing sites for safe quadrotor landing. Our solution efficiently integrates 2D and 3D environmental information, eliminating the need for external aids such as GPS and computationally intensive elevation maps. The proposed pipeline combines semantic data derived from a Neural Network (NN), to extract environmental features, with geometric data obtained from a disparity map, to extract critical geometric attributes such as slope, flatness, and roughness. We define several cost metrics based on these attributes to evaluate safety, stability, and suitability of regions in the environments and identify the most suitable landing area. Our approach runs in real-time on quadrotors equipped with limited computational capabilities. Experimental results conducted in diverse environments demonstrate that the proposed method can effectively assess and identify suitable landing areas, enabling the safe and autonomous landing of a quadrotor.
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