Research Analyzer
← Back ICRA 2024

A Point-To-Distribution Degeneracy Detection Factor for LiDAR SLAM Using Local Geometric Models

Sehua Ji, Weinan Chen, Zerong Su, Yisheng Guan, Jiehao Li, Hong Zhang, Haifei Zhu

PDF

Abstract

Limited by the working principles, LiDAR-SLAM systems suffer from the degeneration phenomenon in environ- ments such as long corridors and tunnels, due to the lack of sufficient geometric features for frame-to-frame matching. The accuracy and sensitivity of existing degeneracy detection methods need to be further improved. In this paper, we propose a novel method for degeneracy detection using local geometric models based on point-to-distribution matching. To obtain an accurate description of local geometric models, an adaptive adjustment of voxel segmentation according to the point cloud distribution and density is designed. The codes of the proposed method is open-source and available at https://github.com/jisehua/Degenerate-Detection.git. Experi- ments with public datasets and self-build robots were conducted to evaluate the methods. The results exhibit that our pro- posed method achieves higher accuracy than the other existing approaches. Applying our proposed method is beneficial for improving the robustness of the LiDAR-SLAM systems.

Index terms

Range Sensing Localization Mapping