在均匀的室内环境中使用不同SLAM方法的机器人定位性能

Navid Zarrabi, Rasul Fesharakifard, M. Menhaj
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引用次数: 1

摘要

机器人定位一直是机器人领域关注的热点问题。本文利用四种不同的测量工具对基于ros的差分平台的机器人定位性能进行了研究。大多数移动机器人使用里程计数据进行定位,这又受到编码器和imu的精度以及跟踪表面质量的高度影响。本研究的主要目的是消除距离测量,仅通过图像或激光扫描来估计机器人的位置和方向(姿态)。提出了几种SLAM方法从视觉数据中提取机器人姿态。尽管近年来出现了视觉传感器,但没有相关的研究发现相机类型对姿态精度的影响。在这项工作中,Visual SLAM使用Xbox 360 Kinect, Xbox One Kinect, Realsense D435实现,激光SLAM使用Hokuyo UTM30-LX实现。最后,结合各自的性能,讨论了各自的优缺点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robot localization performance using different SLAM approaches in a homogeneous indoor environment
Robot localization has always been a significant concern in the robotic field. This paper presents robot localization performance for a ROS-based differential platform using four distinct measuring tools. The majority of mobile robots deploy the odometry data for localization, which in turn is highly influenced by the accuracy of encoders and IMUs as well as the quality of tracking surface. The main objective of this research is to eliminate the odometry and to estimate the robot's position and orientation (Pose) merely through an image or a laser scan. Several SLAM methods have been proposed to extract the robot's Pose out of visual data. Despite the emergence of visual sensors in recent years, no pertinent study could be found on the influence of camera types on the Pose accuracy. In this work, Visual SLAM is implemented using Xbox 360 Kinect, Xbox One Kinect, Realsense D435, and Laser SLAM is implemented utilizing Hokuyo UTM30-LX. At last, the benefits and drawbacks of using each are discussed by referring to their performance.
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