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Improvements for an appearance-based SLAM-Approach for large-scale environments

机译:基于外观的SLAM方法改进了大规模环境的方法

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In continuation of our previous work on visual, appearance-based localization and mapping, we presented in [5] a novel appearance-based, visual SLAM approach. The essential contribution of this work was an adaptive sensor model, which is estimated online, and a graph matching scheme to evaluate the likelihood of a given topological map. Both methods enable the combination of an appearance-based, visual localization and mapping concept with a Rao-Blackwellized Particle Filter (RBPF) as state estimator to a real-world suitable, online SLAM approach. In our system, each RBPF particle incrementally constructs its own graph-based environment model which is labeled with visual appearance features (extracted from panoramic 360o snapshots of the environment) and the estimated poses of the places where the snapshots were captured. The essential advantage of this appearance-based SLAM approach is its low memory and computing-time requirements. Therefore, the algorithm is able to perform in real-time. In this paper we improve our algorithm to deal with dynamic changes in the environment which is typical in real-world environments. Furthermore, we describe a method to limit the memory consumption of the environment model that is needed for large maps. Finally, we present the results of SLAM experiments in a dynamical and large environment that investigates the stability and localization accuracy of this SLAM technique.
机译:在继续我们以前的视觉,外观的本地化和映射方面的延续中,我们介绍了一种基于新颖的外观,视觉SLAM方法。这项工作的基本贡献是一个自适应传感器模型,其估计在线,以及评估给定拓扑图的可能性的图形匹配方案。两种方法使得具有基于外观的,视觉定位和映射概念的组合,将RAO黑威胁粒子滤波器(RBPF)作为状态估计器到真实世界,在线SLAM方法。在我们的系统中,每个RBPF粒子逐步构造其自己的基于图形的环境模型,该环境模型标记为可视化外观特征(从环境的全景360O快照中提取)和捕获快照的地方的估计姿势。这种基于外观的SLAM方法的基本优势是其低存储器和计算时间要求。因此,该算法能够实时执行。在本文中,我们提高了我们的算法来处理现实环境中典型的环境的动态变化。此外,我们描述了一种限制大地图所需的环境模型的存储器消耗的方法。最后,我们介绍了在动态和大环境中的SLAM实验的结果,调查了这种充满技术的稳定性和本地化精度。

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