LIDAR/MEMS IMU integrated navigation (SLAM) method for a small UAV in indoor environments

Rongbing Li, Jianye Liu, Ling Zhang, Y. Hang
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引用次数: 109

Abstract

Simultaneous Localization and Mapping (SLAM) based on LIDAR and MEMS IMU is a kind of autonomous integrated navigation technology. It can provide attitude, velocity position for a small UAV in an indoor frame during the outage of GNSS. A method of integrating the measurements from a LIDAR and a MEMS IMU was proposed in the paper. LIDAR measurements are a set of ranges and scan angles. The angle rates and accelerations from MEMS IMU are used to drive the simplified strapdown INS equations. The first step of the method is environment features extracting from the measurements of LIDAR and constructing a feature map. Then, the model of errors of LIDAR measurement due to the change of the scan plane during the attitude manoeuver is established and compensated based on aiding information from MEMS INS and the assumption about the structural indoor environment. The relative position parameters derived from environmental features delay matching algorithm and the differences of measurements of LIDAR at adjacent times are used to estimate the error of MEMS INS and MEMS sensors by a Kaiman Filter. A LIDAR/MEMS IMU prototype was designed to verify the practicability of the integrated navigation system of LIDAR and MEMS IMU. Some experiments were carried out in a room and the results demonstrated the potential use of the LIDAR/MEMS IMU integration navigation system.
小型无人机室内环境激光雷达/MEMS IMU组合导航方法
基于激光雷达和MEMS IMU的同步定位与测绘(SLAM)是一种自主组合导航技术。它可以在GNSS中断期间为室内框架中的小型无人机提供姿态,速度位置。提出了一种集成激光雷达和MEMS IMU测量数据的方法。激光雷达测量是一组范围和扫描角度。利用MEMS IMU的角速率和加速度来驱动简化的捷联惯性控制方程。该方法的第一步是从激光雷达测量数据中提取环境特征并构建特征图。然后,基于MEMS INS的辅助信息和结构室内环境假设,建立了姿态操纵过程中扫描平面变化引起的激光雷达测量误差模型,并进行了补偿。利用环境特征延迟匹配算法得到的相对位置参数和相邻时刻激光雷达测量值的差异,通过Kaiman滤波估计MEMS INS和MEMS传感器的误差。为了验证激光雷达与MEMS IMU组合导航系统的实用性,设计了激光雷达/MEMS IMU原型机。在室内进行了一些实验,结果证明了激光雷达/MEMS IMU集成导航系统的潜在用途。
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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