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Using collaborative sharing on cloud for fast relocalization in keyframe-based SLAM

机译:基于关键帧的SLAM在云中使用协作共享进行快速重建

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Relocalization when tracking fails during simultaneous localization and mapping (SLAM) is still a task full of challenges, especially for these using keyframe technology to reduce backend pose graph size. These challenges come from two aspects, which include lack of enough image data when tracking fails and the high computational complexity which can't afford by local robot. In this situation, even the state-of-the-art keyframe-based SLAM may not be fast enough to recovery from the tracking failure state. However, the emerging cloud robotics has enlightened a new direction to address relocalization problem in both two factors and in this paper we present an approach based on cloud-based sharing, which aims at providing a way for fast relocalization on the existing keyframe-based SLAM framework. Our method can effectively utilize the sharing environment map data contributed by large scale of robots for the local relocalization and also proposes various mechanisms to eliminate the degeneration of this distributed model and the unstable network. We have realized the prototype, and made it cooperation with the leading framework, ORB-SLAM. The evaluation results also show that our method does have the ability for fast relocate itself compared with the original setup and retains the high efficiency of the original SLAM framework in normal state.
机译:在同时定位和Mapping(Slam)期间跟踪失败时的重新定位仍然是一个充满挑战的任务,特别是对于使用关键帧技术来减少后端姿势图尺寸。这些挑战来自两个方面,其中包括跟踪失败时缺乏足够的图像数据以及本地机器人不能承受的高计算复杂性。在这种情况下,即使是最先进的基于关键帧的SLAM也可能不足以从跟踪失败状态恢复。然而,新兴云机器人已经开明了一个新的方向来解决两个因素的重新定位问题,并在本文中提出了一种基于云的共享的方法,这旨在为现有的基于关键帧的Slam提供一种快速重定位化的方法框架。我们的方法可以有效地利用由大规模的机器人提供的共享环境地图数据,用于局部重锁定化,并且还提出了各种机制来消除该分布式模型和不稳定网络的退化。我们已经实现了原型,并与领先的框架,ORB-Slam进行了合作。评估结果还表明,与原始设置相比,我们的方法确实具有快速重新定位本身的能力,并在正常状态下保留原始SLAM框架的高效率。

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