A quantitative study of mapping and localization algorithms on ROS based differential robot

Kartik Madhira, J. Patel, Dilip Kothari, D. Panchal, Dhruva G. Patel
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引用次数: 5

Abstract

The ability for to simultaneously map the environment and localise itself with it respect to it, is the most important element of Autonomous Vehicles. The Simultaneous localization and Mapping (SLAM) is a complex process and consumes major chunk of computational power. Many algorithms have been developed to enhance the SLAM process and is a progressing area in Robotics research. ROS is one such framework which provides multiple algorithm nodes to work with and provides a communication layer to Robots. Many of these algorithms majorly in use are HectorSLAM, Gmapping and KartoSLAM. This paper provides with a quantitative analysis of these algorithms and their performance on various parameters on a differential robot equipped with 2D Laser scanner. We Study the optimum parameters of each of these algorithms and then compare the performance of these algorithms against one another. Since computational requirement of these algorithms is expensive, we also study the variation in performance using a Nvidia Jetson TK1 Embedded board and a Personal Laptop with dedicated GPU.
基于ROS的差分机器人映射与定位算法的定量研究
同时绘制环境地图并根据环境定位自身的能力,是自动驾驶汽车最重要的元素。同时定位与映射(SLAM)是一个复杂的过程,消耗大量的计算能力。许多算法已经被开发出来以增强SLAM过程,这是机器人研究的一个进展领域。ROS就是这样一个框架,它提供了多个算法节点,并为机器人提供了一个通信层。目前使用的算法主要有HectorSLAM、gapping和KartoSLAM。本文对这些算法进行了定量分析,并在安装二维激光扫描仪的微分机器人上对不同参数下的性能进行了分析。我们研究了每种算法的最优参数,然后比较了这些算法的性能。由于这些算法的计算需求昂贵,我们还使用Nvidia Jetson TK1嵌入式板和带有专用GPU的个人笔记本电脑研究了性能变化。
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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