Indoor Robot SLAM with Multi-Sensor Fusion

Jionglin He, Jiaxiang Fang, Shuping Xu, Dingzhe Yang
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Abstract

In order to solve the problem of large positioning error and incomplete mapping of SLAM based on two-dimensional lidar in indoor environment, a multi-sensor fusion SLAM algorithm for indoor robots was proposed. Aiming at the mismatch problem of the traditional ICP algorithm in the front end of the lidar SLAM, the algorithm adopts the PL-ICP algorithm that is more suitable for the indoor environment, and uses the extended Kalman filter to fuse the wheel odometer and IMU to provide the initial motion estimation value. Then, during the mapping phase, the pseudo 2D laser data converted from the 3D point cloud data obtained by the depth camera is fused with the data obtained from the 2D lidar to compensate for the lack of vertical field of view in the 2D lidar mapping. The final experimental results show that the fusion odometer data has improved the positioning accuracy by at least 33% compared to a single wheeled odometer, providing a higher initial iteration value for the PL-ICP algorithm. At the same time, fusion mapping compensates for the shortcomings of a single two-dimensional lidar mapping, and constructs an environmental map with more complete environmental information.
利用多传感器融合实现室内机器人 SLAM
为了解决室内环境下基于二维激光雷达的SLAM定位误差大、映射不完整的问题,提出了一种室内机器人多传感器融合SLAM算法。针对传统 ICP 算法在激光雷达 SLAM 前端的不匹配问题,该算法采用了更适合室内环境的 PL-ICP 算法,并利用扩展卡尔曼滤波器融合车轮里程计和 IMU,提供初始运动估计值。然后,在测绘阶段,将深度相机获得的三维点云数据转换成的伪二维激光数据与二维激光雷达获得的数据进行融合,以弥补二维激光雷达测绘中垂直视场的不足。最终的实验结果表明,与单轮里程计相比,融合里程计数据至少提高了 33% 的定位精度,为 PL-ICP 算法提供了更高的初始迭代值。同时,融合测绘弥补了单一二维激光雷达测绘的不足,构建的环境地图具有更完整的环境信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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