主催: 一般社団法人 日本機械学会
会議名: ロボティクス・メカトロニクス 講演会2024
開催日: 2024/05/29 - 2024/06/01
In a large-scale environment or during long-term use of SLAM, increase in data size and computational cost is crucial problems. Therefore, the need arises for maps with reduced data size, such as graph maps. Furthermore, it is essential to identify free space of the environment with low computational costs prior to constructing maps. Proximity point is a type of keypoints of point cloud that can be utilized for data reduction. In this paper, we propose a new method to extract free space with low computational cost based on a geometric property of proximity points. Subsequently, we construct 2D graph maps based on the modified Growing Neural Gas (GNG) algorithm which ensures that the edges do not interfere with the obstacles. Experiments are conducted using six sets of data acquired in an outdoor environment.