Litcius/Paper detail

Semantic geometric fusion multi-object tracking and lidar odometry in dynamic environment

Tingchen Ma, Guolai Jiang, Yongsheng Ou, Sheng Xu

2024Robotica11 citationsDOIOpen Access PDF

Abstract

Abstract Simultaneous localization and mapping systems based on rigid scene assumptions cannot achieve reliable positioning and mapping in a complex environment with many moving objects. To solve this problem, this paper proposes a novel dynamic multi-object lidar odometry (MLO) system based on semantic object recognition technology. The proposed system enables the reliable localization of robots and semantic objects and the generation of long-term static maps in complex dynamic scenes. For ego-motion estimation, the proposed system extracts environmental features that take into account both semantic and geometric consistency constraints. Then, the filtered features can be robust to the semantic movable and unknown dynamic objects. In addition, we propose a new least-squares estimator that uses geometric object points and semantic box planes to realize the multi-object tracking (SGF-MOT) task robustly and precisely. In the mapping module, we implement dynamic semantic object detection using the absolute trajectory tracking list. By using static semantic objects and environmental features, the system eliminates accumulated localization errors and produces a purely static map. Experiments on the public KITTI dataset show that the proposed MLO system provides more accurate and robust object tracking performance and better real-time localization accuracy in complex scenes compared to existing technologies.

Topics & Concepts

OdometryComputer visionComputer scienceArtificial intelligenceObject (grammar)Consistency (knowledge bases)LidarTrajectoryRobotVideo trackingSemantic mappingMobile robotRemote sensingGeographyAstronomyPhysicsRobotics and Sensor-Based Localization3D Surveying and Cultural HeritageRobotic Path Planning Algorithms