Publication | Open Access
Towards a Meaningful 3D Map Using a 3D Lidar and a Camera
33
Citations
31
References
2018
Year
EngineeringField RoboticsMeaningful 3DPoint Cloud ProcessingDepth MapMulti-view GeometryPoint CloudMapping3D Computer VisionSemantic 3DImage AnalysisMap RefinementRobot LearningSensor FusionComputational GeometryGeometric ModelingCartographyMachine VisionLidarDeep LearningComputer Vision3D VisionNatural SciencesSemantic Mapping3D Scanning3D ReconstructionRoboticsScene Modeling
Semantic 3D maps are required for various applications including robot navigation and surveying, and their importance has significantly increased. Generally, existing studies on semantic mapping were camera-based approaches that could not be operated in large-scale environments owing to their computational burden. Recently, a method of combining a 3D Lidar with a camera was introduced to address this problem, and a 3D Lidar and a camera were also utilized for semantic 3D mapping. In this study, our algorithm consists of semantic mapping and map refinement. In the semantic mapping, a GPS and an IMU are integrated to estimate the odometry of the system, and subsequently, the point clouds measured from a 3D Lidar are registered by using this information. Furthermore, we use the latest CNN-based semantic segmentation to obtain semantic information on the surrounding environment. To integrate the point cloud with semantic information, we developed incremental semantic labeling including coordinate alignment, error minimization, and semantic information fusion. Additionally, to improve the quality of the generated semantic map, the map refinement is processed in a batch. It enhances the spatial distribution of labels and removes traces produced by moving vehicles effectively. We conduct experiments on challenging sequences to demonstrate that our algorithm outperforms state-of-the-art methods in terms of accuracy and intersection over union.
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