A Method of Merging Maps for MUAVs Based on an Improved Genetic Algorithm

Sensors (Basel). 2023 Jan 1;23(1):447. doi: 10.3390/s23010447.

Abstract

The merging of environmental maps constructed by individual UAVs alone and the sharing of information are key to improving the efficiency of distributed multi-UAVexploration. This paper investigates the raster map-merging problem in the absence of a common reference coordinate system and the relative position information of UAVs, and proposes a raster map-merging method with a directed crossover multidimensional perturbation variational genetic algorithm (DCPGA). The algorithm uses an optimization function reflecting the degree of dissimilarity between the overlapping regions of two raster maps as the fitness function, with each possible rotation translation transformation corresponding to a chromosome, and the binary encoding of the coordinates as the gene string. The experimental results show that the algorithm could converge quickly and had a strong global search capability to search for the optimal overlap area of the two raster maps, thus achieving map merging.

Keywords: LiDAR; MUAVs; genetic algorithm; map merging; optimization problem.

MeSH terms

  • Algorithms*