Evaluation of different SLAM algorithms using Google tangle data

Liyang Liu, Youbing Wang, Liang Zhao, Shoudong Huang
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引用次数: 7

Abstract

In this paper, we evaluate three state-of-the-art Simultaneous Localization and Mapping (SLAM) methods using data extracted from a state-of-the-art device for indoor navigation — the Google Tango tablet. The SLAM algorithms we investigated include Preintegration Visual Inertial Navigation System (VINS), ParallaxBA and ORB-SLAM. We first describe the detailed process of obtaining synchronized IMU and image data from the Google Tango device, then we present some of the SLAM results obtained using the three different SLAM algorithms, all with the datasets collected from Tango. These SLAM results are compared with that obtained from Tango's inbuilt motion tracking system. The advantages and failure modes of the different SLAM algorithms are analysed and illustrated thereafter. The evaluation results presented in this paper are expected to provide some guidance on further development of more robust SLAM algorithms for robotic applications.
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利用Google缠结数据对不同SLAM算法进行评价
在本文中,我们使用从最先进的室内导航设备——谷歌探戈平板电脑中提取的数据,评估了三种最先进的同步定位和地图绘制(SLAM)方法。我们研究的SLAM算法包括预积分视觉惯性导航系统(VINS)、ParallaxBA和ORB-SLAM。我们首先详细描述了从Google Tango设备获取同步IMU和图像数据的过程,然后介绍了使用三种不同的SLAM算法获得的一些SLAM结果,所有这些结果都来自Tango收集的数据集。这些SLAM结果与Tango内置运动跟踪系统获得的结果进行了比较。然后分析和说明了不同SLAM算法的优点和失效模式。本文提出的评估结果有望为机器人应用中更健壮的SLAM算法的进一步开发提供一些指导。
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