Semantic map generation algorithm combined with YOLOv5

Qing Ju, F. Liu, Guangbin Li, Xiao Nan Wang
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引用次数: 2

Abstract

Traditional visual SLAM algorithms have problems such as lack of semantic information, low accuracy and slow speed of 3D point cloud segmentation. This paper proposes a semantic map generation algorithm based on YOLOv5 and improved VCCS point cloud segmentation. Firstly, the ORB-SLAM2 algorithm is used to generate the original three-dimensional point cloud. The target is detected by YOLOv5 and the original point cloud is semantically annotated, and the objects in the point cloud are expressed in other colors. Then, the VCCS algorithm was used for over-segmentation to obtain supervoxel clustering. The improved VCCS algorithm was used to merge supervoxel clustering to improve the accuracy of segmentation results. Finally, a three-dimensional point cloud map with semantic information is established. Experiments show that the algorithm can generate semantic maps very well, and the accuracy and speed of 3D point cloud segmentation are greatly improved.
结合YOLOv5的语义图生成算法
传统的视觉SLAM算法在三维点云分割中存在语义信息缺乏、精度低、速度慢等问题。本文提出了一种基于YOLOv5和改进的VCCS点云分割的语义地图生成算法。首先,利用ORB-SLAM2算法生成原始三维点云;通过YOLOv5检测目标,对原始点云进行语义标注,点云中的目标用其他颜色表示。然后,利用VCCS算法进行过分割,获得超体素聚类;采用改进的VCCS算法合并超体素聚类,提高分割结果的准确性。最后,建立了具有语义信息的三维点云图。实验表明,该算法可以很好地生成语义图,大大提高了三维点云分割的精度和速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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