15 November 2023 Optimal ant colony algorithm for UAV airborne LiDAR route planning in densely vegetated areas
Feifei Tang, Kunyang Li, Feng Xu, Ling Han, Huan Zhang, Zhixing Yang
Author Affiliations +
Abstract

In order to solve the problems of redundant data acquisition and sparse ground points in dense vegetation areas by conventional unmanned aerial vehicle (UAV) path planning methods, an UAV-airborne LiDAR route optimization method for dense vegetation areas is proposed. First, based on the high-resolution true color remote sensing images of the study area, the “fuzzy” calculation of vegetation coverage for route planning is completed. Then, an optimized ant colony algorithm is proposed for route planning, which introduces vegetation coverage as a reference for route planning and optimizes the pheromone initialization, state transfer rules, pheromone calculation, and update strategies in the classical ant colony algorithm to obtain more ground points. The experimental results show that this method can take into account the vegetation coverage of the flight area and find the area with low vegetation coverage to complete the route planning and efficiently use the sweeping principle of three-dimensional laser scanning to improve the probability of ground point acquisition, with faster iteration speed than the classical ant colony algorithm, and improve the efficiency of ground point acquisition in dense vegetation areas.

© 2023 Society of Photo-Optical Instrumentation Engineers (SPIE)
Feifei Tang, Kunyang Li, Feng Xu, Ling Han, Huan Zhang, and Zhixing Yang "Optimal ant colony algorithm for UAV airborne LiDAR route planning in densely vegetated areas," Journal of Applied Remote Sensing 17(4), 046506 (15 November 2023). https://doi.org/10.1117/1.JRS.17.046506
Received: 6 June 2023; Accepted: 30 October 2023; Published: 15 November 2023
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KEYWORDS
Vegetation

Unmanned aerial vehicles

LIDAR

Mathematical optimization

Education and training

Image classification

Remote sensing

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