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An Optimized Tightly-Coupled VIO Design on the Basis of the Fused Point and Line Features for Patrol Robot Navigation

机译:基于巡逻机器人导航的融合点和线特征的优化紧密耦合VIO设计

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摘要

The development and maturation of simultaneous localization and mapping (SLAM) in robotics opens the door to the application of a visual inertial odometry (VIO) to the robot navigation system. For a patrol robot with no available Global Positioning System (GPS) support, the embedded VIO components, which are generally composed of an Inertial Measurement Unit (IMU) and a camera, fuse the inertial recursion with SLAM calculation tasks, and enable the robot to estimate its location within a map. The highlights of the optimized VIO design lie in the simplified VIO initialization strategy as well as the fused point and line feature-matching based method for efficient pose estimates in the front-end. With a tightly-coupled VIO anatomy, the system state is explicitly expressed in a vector and further estimated by the state estimator. The consequent problems associated with the data association, state optimization, sliding window and timestamp alignment in the back-end are discussed in detail. The dataset tests and real substation scene tests are conducted, and the experimental results indicate that the proposed VIO can realize the accurate pose estimation with a favorable initializing efficiency and eminent map representations as expected in concerned environments. The proposed VIO design can therefore be recognized as a preferred tool reference for a class of visual and inertial SLAM application domains preceded by no external location reference support hypothesis.
机译:机器人技术中同时定位和地图绘制(SLAM)的发展和成熟为视觉惯性里程表(VIO)在机器人导航系统中的应用打开了大门。对于没有可用的全球定位系统(GPS)支持的巡逻机器人,嵌入式VIO组件通常由惯性测量单元(IMU)和摄像机组成,将惯性递归与SLAM计算任务融合在一起,并使机器人能够估计其在地图中的位置。优化的VIO设计的重点在于简化的VIO初始化策略以及基于融合点和线特征匹配的方法,可在前端进行有效的姿势估计。通过紧密耦合的VIO解剖结构,系统状态在向量中明确表示,并由状态估计器进一步估计。详细讨论了与后端的数据关联,状态优化,滑动窗口和时间戳对齐相关的问题。进行了数据集测试和实际的变电站现场测试,实验结果表明,所提出的VIO可以在相关环境中以期望的良好初始化效率和出色的地图表示实现准确的姿态估计。因此,对于没有外部位置参考支持假设的视觉和惯性SLAM应用领域,建议的VIO设计可以被视为首选工具参考。

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