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SIMULTANEOUS LOCALIZATION AND MAPPING FOR SEMI-SPARSE POINT CLOUDS

机译:半稀云云的同时定位和映射

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摘要

3D representation of the environment is a piece of vital information for most of the engineering sciences. However, providing such information in classical surveying approaches demands a considerable amount of time for localizing the sensor in a desired coordinate frame to map the environment. Simultaneous Localization And Mapping (SLAM) algorithm is capable of localizing the sensor and do the mapping while the sensor is moving through the environment. In this paper, SLAM will be applied on the data of a lightweight 3D laser scanner in which we call semi-sparse point cloud, because of the unique specifications of the point cloud which comes from various resolutions in vertical and horizontal directions. In contrast to most of the SLAM algorithms, there is no aiding sensor to provide prior information of motion. The output of the algorithm would be a high-density full geometry detailed map in a short time. The accuracy of the algorithm has been estimated in a medium scale simulated outdoor environments in Gazebo and Robot Operating System (ROS). Considering Velodyne Puck accuracy which is 3 cm, the map was generated with approximately 6 cm accuracy.
机译:环境的3D表示是大多数工程科学的重要信息。然而,在经典测量方法中提供这样的信息需要在期望的坐标帧中定位传感器的相当长的时间来映射环境。同时定位和映射(SLAM)算法能够定位传感器并在传感器通过环境中移动时进行映射。在本文中,SLAM将应用于轻量级3D激光扫描仪的数据,因为点云的独特规格,从垂直和水平方向上的各种分辨率都有唯一的规格。与大多数SLAM算法相反,没有辅助传感器提供运动的先前信息。算法的输出将在短时间内是高密度全几何形状的详细地图。估计算法的准确性在凉亭和机器人操作系统(ROS)中的中型模拟室外环境中估计。考虑到3厘米的Velodyne Puck精度,产生大约6cm精度的地图。

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