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ERF-IMCS: An Efficient and Robust Framework with Image-Based Monte Carlo Scheme for Indoor Topological Navigation

机译:ERF-IMCS:具有基于图像的蒙特卡罗方案的高效且强大的框架,用于室内拓扑导航

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摘要

Conventional approaches to global localization and navigation mainly rely on metric maps to provide precise geometric coordinates, which may cause the problem of large-scale structural ambiguity and lack semantic information of the environment. This paper presents a scalable vision-based topological mapping and navigation method for a mobile robot to work robustly and flexibly in large-scale environment. In the vision-based topological navigation, an image-based Monte Carlo localization method is presented to realize global topological localization based on image retrieval, in which fine-tuned local region features from an object detection convolutional neural network (CNN) are adopted to perform image matching. The combination of image retrieval and Monte Carlo provide the robot with the ability to effectively avoid perceptual aliasing. Additionally, we propose an effective visual localization method, simultaneously employing the global and local CNN features of images to construct discriminative representation for environment, which makes the navigation system more robust to the interference of occlusion, translation, and illumination. Extensive experimental results demonstrate that ERF-IMCS exhibits great performance in the robustness and efficiency of navigation.
机译:全局定位和导航的常规方法主要依赖于公制地图提供精确的几何坐标,这可能导致大规模结构模糊的问题和缺乏环境的语义信息。本文介绍了一种可扩展的视觉基于视觉的拓扑映射和导航方法,用于移动机器人在大规模环境中鲁棒地和灵活地工作。在基于视觉的拓扑导航中,提出了一种基于图像的蒙特卡罗本地化方法,以实现基于图像检索的全球拓扑定位,其中采用来自对象检测卷积神经网络(CNN)的微调局部区域特征来执行图像匹配。图像检索和Monte Carlo的组合为机器人提供了有效避免感知混叠的能力。此外,我们提出了一种有效的视觉定位方法,同时采用图像的全局和局部CNN特征来构建环境的鉴别性表示,这使得导航系统对遮挡,翻译和照明的干扰更鲁棒。广泛的实验结果表明,ERF-IMC在导航稳健性和效率方面表现出具有很大的性能。

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