The improvement of pose estimation accuracy is currently the fundamental problem in mobile robots. This study aims to improve the use of observations to enhance accuracy. The selection of feature points affects the accuracy of pose estimation, leading to the question of how the contribution of observation influences the system. Accordingly, the contribution of information to the pose estimation process is analyzed. Moreover, the uncertainty model, sensitivity model, and contribution theory are formulated, providing a method for calculating the contribution of every residual term. The proposed selection method has been theoretically proven capable of achieving a global statistical optimum. The proposed method is tested on artificial data simulations and compared with the KITTI benchmark. The experiments revealed superior results in contrast to ALOAM and MLOAM. The proposed algorithm is implemented in LiDAR odometry and LiDAR Inertial odometry both indoors and outdoors using diverse LiDAR sensors with different scan modes, demonstrating its effectiveness in improving pose estimation accuracy. A new configuration of two laser scan sensors is subsequently inferred. The configuration is valid for three-dimensional pose localization in a prior map and yields results at the centimeter level.
翻译:提高表面估计准确性是移动机器人目前的根本问题。本项研究旨在改进对观测的使用以提高准确性。选择特征点会影响表面估计的准确性,从而导致观察的贡献如何影响系统的问题。因此,对信息对表面估计过程的贡献进行了分析。此外,还制定了不确定性模型、灵敏度模型和贡献理论,为计算每个剩余术语的贡献提供了一种方法。拟议的选择方法在理论上证明能够实现全球统计最佳。拟议的方法在人工数据模拟中测试,并与KITTI基准进行比较。与ALOAM和MLOAM相比,实验显示了优异的结果。提议的算法在LIDAR的odology和LIDAR的室内和户外使用不同扫描模式的不同LIDAR传感器实施,表明其在提高表面估计准确性方面的有效性。随后推断出两个激光扫描传感器的新配置。对于在以前的地图中显示本地化和在厘米一级产生结果的三维值是有效的。