PIRF-Nav 2: Speeded-up online and incremental appearance-based SLAM in an indoor environment

Noppharit Tongprasit, Aram Kawewong, O. Hasegawa
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引用次数: 16

Abstract

This paper presents a fast, online, and incremental solution for an appearance-based loop closure detection problem in an indoor environment. This problem is important in terms of the navigation of mobile robots. Appearance-based Simultaneous Localization And Mapping (SLAM) for a highly dynamic environment, called Position Invariant Robust Feature Navigation (PIRF-Nav), was first proposed by Kawewong et al. in 2010. Their results showed major improvements from other state-of-the-art methods. However, the computational expense of PIRF-Nav is beyond real time, and it consumes a tremendous amount of memory. These two factors hinder the use of PIRF-Nav for mobile robot applications. This study proposed (i) modified PIRF extraction that makes the system more suitable for an indoor environment and (ii) new dictionary management that can eliminate redundant searching and conserve memory consumption. According to the results, our proposed method can finish tasks up to 12 times faster than PIRF-Nav, with only slight percentage decline in a recall, while the precision remains 1. In addition, for a more challenging task, we collected additional data from a crowded university canteen during lunch time. Even in this cluttered environment, our proposed method performs better with real-time processing compared with other methods.
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PIRF-Nav 2:在室内环境中加速在线和增量的基于外观的SLAM
本文针对室内环境中基于外观的闭环检测问题,提出了一种快速、在线和增量的解决方案。这个问题对于移动机器人的导航是很重要的。用于高度动态环境的基于外观的同时定位和映射(SLAM),称为位置不变鲁棒特征导航(PIRF-Nav),由Kawewong等人于2010年首次提出。他们的结果显示,与其他最先进的方法相比,有了重大改进。然而,PIRF-Nav的计算开销超出了实时性,并且消耗了大量的内存。这两个因素阻碍了PIRF-Nav在移动机器人应用中的应用。本研究提出(i)改进的PIRF提取,使系统更适合室内环境;(ii)新的字典管理,可以消除冗余搜索和节省内存消耗。结果表明,我们提出的方法完成任务的速度比PIRF-Nav快12倍,召回率只有轻微的百分比下降,而精度保持在1。此外,为了完成一项更具挑战性的任务,我们在午餐时间从拥挤的大学食堂收集了额外的数据。即使在这种混乱的环境中,与其他方法相比,我们提出的方法在实时处理方面表现更好。
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