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RTLIO: Real-Time LiDAR-Inertial Odometry and Mapping for UAVs

机译:RTLIO:实时连裙型惯性内径和无人机的映射

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摘要

Most UAVs rely on GPS for localization in an outdoor environment. However, in GPS-denied environment, other sources of localization are required for UAVs to conduct feedback control and navigation. LiDAR has been used for indoor localization, but the sampling rate is usually too low for feedback control of UAVs. To compensate this drawback, IMU sensors are usually fused to generate high-frequency odometry, with only few extra computation resources. To achieve this goal, a real-time LiDAR inertial odometer system (RTLIO) is developed in this work to generate high-precision and high-frequency odometry for the feedback control of UAVs in an indoor environment, and this is achieved by solving cost functions that consist of the LiDAR and IMU residuals. Compared to the traditional LIO approach, the initialization process of the developed RTLIO can be achieved, even when the device is stationary. To further reduce the accumulated pose errors, loop closure and pose-graph optimization are also developed in RTLIO. To demonstrate the efficacy of the developed RTLIO, experiments with long-range trajectory are conducted, and the results indicate that the RTLIO can outperform LIO with a smaller drift. Experiments with odometry benchmark dataset (i.e., KITTI) are also conducted to compare the performance with other methods, and the results show that the RTLIO can outperform ALOAM and LOAM in terms of exhibiting a smaller time delay and greater position accuracy.
机译:大多数无人机依赖于GPS在室外环境中的本地化。然而,在GPS拒绝环境中,无人机需要其他本地化来源来进行反馈控制和导航。 LIDAR已被用于室内定位,但采样率通常太低,无法对无人机进行反馈控制。为了补偿该缺点,IMU传感器通常融合以产生高频测距仪,只有额外的计算资源。为实现这一目标,在这项工作中开发了一个实时连极型惯性里程表系统(RTLIO),以产生高精度和高频测距,用于室内环境中的无人机的反馈控制,这是通过解决成本函数来实现的由激光器和IMU残差组成。与传统的LIO方法相比,即使当设备静止时,也可以实现显影RTLIO的初始化过程。为了进一步减少累积的姿势错误,循环闭合和姿势图优化也在RTLIO中开发。为了证明所发育的RTLIO的功效,进行了长距离轨迹的实验,结果表明RTLIO可以以较小的漂移更优于LIO。还进行了使用内径基准数据集(即KITTI)的实验以将性能与其他方法进行比较,结果表明RTLIO可以在展示较小的时间延迟和更高的位置精度方面优于AloAM和壤土。

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