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首页> 外文期刊>IEEE Transactions on Robotics >Graph-Based Proprioceptive Localization Using a Discrete Heading-Length Feature Sequence Matching Approach
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Graph-Based Proprioceptive Localization Using a Discrete Heading-Length Feature Sequence Matching Approach

机译:基于图的基础概念本地化使用离散的标题长度特征序列匹配方法

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Proprioceptive localization refers to a new class of robot egocentric localization methods that do not rely on the perception and recognition of external landmarks. These methods are naturally immune to bad weather, poor lighting conditions, or other extreme environmental conditions that may hinder exteroceptive sensors such as a camera or a laser ranger finder. These methods depend on proprioceptive sensors such as inertial measurement units and/or wheel encoders. Assisted by magnetoreception, the sensors can provide a rudimentary estimation of vehicle trajectory which is used to query a prior known map to obtain location. Named as graph-based proprioceptive localization, we provide a low cost fallback solution for localization under challenging environmental conditions. As a robot/vehicle travels, we extract a sequence of heading-length values for straight segments from the trajectory and match the sequence with a preprocessed heading-length graph (HLG) abstracted from the prior known map to localize the robot under a graph-matching approach. Using the information from HLG, our location alignment and verification module compensates for trajectory drift, wheel slip, or tire inflation level. We have implemented our algorithm and tested it in both simulated and physical experiments. The algorithm runs successfully in finding robot location continuously and achieves localization accurate at the level that the prior map allows (less than 10 m).
机译:Benrioceptive定位是指的是一类新的机器人EGENTRIC定位方法,这些方法不依赖于对外部地标的感知和识别。这些方法自然地免受恶劣天气,差的照明条件,或可能阻碍诸如相机或激光游裤子诱捕器的extrepive传感器的其他极端环境条件。这些方法依赖于诸如惯性测量单元和/或轮编码器的预型感应传感器。通过磁化辅助,传感器可以提供车辆轨迹的基本估计,该车辆轨迹用于查询现有的已知地图以获得位置。被命名为基于图形的预言本地化,我们提供了在挑战环境条件下的定位的低成本后备解决方案。作为机器人/车辆行驶,我们从轨迹中提取一系列标题长度值,并将序列与从现有已知地图抽象的预处理的标题长度图(HLG)匹配,以在图形下定位机器人匹配方法。使用HLG的信息,我们的位置对准和验证模块补偿轨迹漂移,轮滑或轮胎通胀水平。我们已经实施了我们的算法,并在模拟和物理实验中进行了测试。该算法连续地在查找机器人位置运行,并在先前地图允许(小于10米)的级别处实现定位准确。

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