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A decentralized framework for simultaneous calibration, localization and mapping with multiple LiDARs

机译:具有多个LIDARS的同时校准,定位和映射的分散框架

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LiDAR is playing a more and more essential role in autonomous driving vehicles for objection detection, self localization and mapping. A single LiDAR frequently suffers from hardware failure (e.g., temporary loss of connection) due to the harsh vehicle environment (e.g., temperature, vibration, etc.), or performance degradation due to the lack of sufficient geometry features, especially for solid-state LiDARs with small field of view (FoV). To improve the system robustness and performance in self-localization and mapping, we develop a decentralized framework for simultaneous calibration, localization and mapping with multiple LiDARs. Our proposed framework is based on an extended Kalman filter (EKF), but is specially formulated for decentralized implementation. Such an implementation could potentially distribute the intensive computation among smaller computing devices or resources dedicated for each LiDAR and remove the single point of failure problem. Then this decentralized formulation is implemented on an unmanned ground vehicle (UGV) carrying 5 low-cost LiDARs and moving at 1.3m/s in urban environments. Experiment results show that the proposed method can successfully and simultaneously estimate the vehicle state (i.e., pose and velocity) and all LiDAR extrinsic parameters. The localization accuracy is up to 0.2% on the two datasets we collected. To share our findings and to make contributions to the community, meanwhile enable the readers to verify our work, we will release all our source codes1 and hardware design blueprint2 on our Github.
机译:激光雷达是打在自主驾驶车辆为目标检测,自我定位和映射着越来越重要的作用。单个激光雷达频繁地从硬件故障(例如,连接的临时损失)由于恶劣的车辆环境(例如,温度,振动等),或性能降低遭受由于缺乏足够的几何特征,特别是对于固态激光雷达的视小场(FOV)。为了提高自我定位与地图系统的鲁棒性和性能,我们开发了同步校准,定位与地图有多个激光雷达分散的框架。我们提出的框架是基于扩展卡尔曼滤波器(EKF),而是特别配制的分散执行。这样的实施可以潜在地分布密集计算专用于每个激光雷达较小的计算设备或资源之间并删除失败问题的单个点。然后这种分散制剂上载5低成本激光雷达的无人地面车辆(UGV)实现,并且在城市环境中以1.3m移动/秒。实验结果表明,所提出的方法可以成功地同时估计车辆状态(即,姿势和速度)和所有的LiDAR外部参数。定位精度可达0.2%,我们搜集到的两个数据集。分享我们的成果,并为社会做出贡献,同时让读者来验证我们的工作,我们会发布我们的所有的源代码 1 和硬件设计蓝图 2 我们的Github上。

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