Litcius/Paper detail

An intensity-enhanced LiDAR SLAM for unstructured environments

Zhiqiang Dai, Jingyi Zhou, Tianci Li, Hexiong Yao, Shi‐Hai Sun, Xiangwei Zhu

2023Measurement Science and Technology21 citationsDOIOpen Access PDF

Abstract

Abstract Traditional LiDAR simultaneous localization and mapping (SLAM) methods rely on geometric features such as lines and planes to estimate pose. However, in unstructured environments where geometric features are sparse or absent, point cloud registration may fail, resulting in decreased mapping and localization accuracy of the LiDAR SLAM system. To overcome this challenge, we propose a comprehensive LiDAR SLAM framework that leverages both geometric and intensity information, specifically tailored for unstructured environments. Firstly, we adaptively extract intensity features and construct intensity constraints based on degradation detection, and then propose a multi-resolution intensity map construction method. The experimental results show that our method achieves a 55% accuracy improvement over the pure geometric LiDAR SLAM system and exhibits superior anti-interference capability in urban corner scenarios. Compared with Intensity-SLAM, the advanced intensity-assisted LiDAR SLAM, our method achieves higher accuracy and efficiency.

Topics & Concepts

LidarPoint cloudSimultaneous localization and mappingComputer scienceIntensity (physics)Artificial intelligenceComputer visionRemote sensingPoint (geometry)GeologyMathematicsRobotMobile robotOpticsGeometryPhysicsRobotics and Sensor-Based LocalizationIndoor and Outdoor Localization Technologies3D Surveying and Cultural Heritage