用于车辆里程计和路径跟踪的传感器融合:ROS仿真

Diego Osorio-Sanchez, H. Gonzalez-Hernandez
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引用次数: 0

摘要

自动驾驶汽车是一个新兴领域,存在许多问题,没有明确的解决方案。其中一个问题是飞行器的姿态估计直到今天这仍然是一个悬而未决的问题。在这项研究中,我们提出了一种传感器融合策略来估计车辆的位置和方向,该算法用于更高级别的轨迹生成和路径跟踪任务。在研究中测试的视觉里程计(VO)算法是ORB SLAM2。我们采用卡尔曼滤波作为传感器融合算法。为了配合GPS、VO、IMU、转向传感器和速度传感器,设计了主要的里程计算法。采用ROS和Gazebo作为实验设置的前一阶段,对所提出的策略进行了仿真测试。与传统的视觉激光雷达方法相比,该方案在经济和计算成本降低方面产生了积极的影响。
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Sensor fusion for vehicle odometry and path tracking: a ROS simulation
Autonomous vehicles are an emerging area with many problems without a definitive solution. One of these problems is the vehicle’s pose estimation which until these days is still an open problem. On this research we propose a sensor fusion strategy that estimates a vehicle’s position and orientation, this algorithm is used for the higher level tasks of trajectory generation and path following. The Visual Odometry (VO) algorithms that were tested during the research are ORB SLAM2. We have used Kalman filters as sensor fusion algorithm. The main odometry algorithm was designed in order to function with a GPS, VO, IMU, steering sensor and a speed sensor. The proposed strategy was tested in simulation using ROS and Gazebo as a prior stage of an experimental setup. This proposal impacts positively in economic and computational costs reduction with respect to traditional Visual-lidar approaches.
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