We proposed a global positioning technique in 3D environment using 3D geometrical map and a RGB-D camera based on a ND (Normal Distributions) voxel matching. Firstly, a 3D geometrical map represented by point-cloud is converted to ND voxels, and eigen ellipses are extracted. Meanwhile, ND voxels are also created from a range image captured by a RGB-D camera, and eigen ellipses and seven representative points are calculated in each ND voxel. For global localization, point-plane and plane-plane correspondences are tested and an optimum global position is determined using a particle filter. Experimental results show that the proposed technique is robust for the similarity in a 3D map and converges more stably than a standard maximum likelihood method using a beam model.
CITATION STYLE
Yongjin, J., Kurazume, R., Iwashita, Y., & Hasegawa, T. (2013). Global Localization for Mobile Robot using Large-scale 3D Environmental Map and RGB-D Camera. Journal of the Robotics Society of Japan, 31(9), 896–906. https://doi.org/10.7210/jrsj.31.896
Mendeley helps you to discover research relevant for your work.