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Integration of Monte Carlo Localization and place recognition for reliable long-term robot localization

机译:蒙特卡罗本地化的集成,并为可靠的长期机器人定位提供识别

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This paper proposes extending Monte Carlo Localization methods with visual information in order to build a long term robot localization system. This system is aimed to work in crowded and non-planar scenarios, where 2D laser rangefinders may not always be enough to match the robot position with the map. Thus, visual place recognition will be used in order to obtain robot position clues that can be used to detect when the robot is lost and also to reset its positions to the right one. The paper presents experimental results based on datasets gathered with a real robot in challenging scenarios.
机译:本文建议将蒙特卡罗本地化方法扩展到视觉信息,以便构建长期机器人定位系统。该系统旨在在拥挤和非平面方案中工作,其中2D激光测距仪可能并不总是足以将机器人位置与地图相匹配。因此,将使用视觉地位识别以获得可用于检测机器人丢失的机器人位置线索,并且还将其位置重置为右侧。本文提出了基于数据集的实验结果,该数据集聚集在一个具有挑战性的情景中的真正机器人。

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