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Adaptation and Learning for Image Based Navigation

机译:基于图像的导航的适应和学习

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摘要

Image based methods are a new approach for solving problems in mobile robotics. Instead of building a metric (3D) model of the environment, these methods work directly in the sensor (image) space. The environment is represented as a topological graph in which each node contains an image taken at some pose in the workspace, and edges connect poses between which a simple path exists. This type of representation is highly scalable and is also well suited to handle the data association problems that effect metric model based methods. In this paper, we present an efficient, adaptive method for qualitative localization using content based image retrieval techniques. In addition, we demonstrate an algorithm which can convert this topological graph into a metric model of the environment by incorporating information about loop closures.
机译:基于图像的方法是解决移动机器人技术问题的一种新方法。这些方法不是在环境中建立度量(3D)模型,而是直接在传感器(图像)空间中工作。环境用拓扑图表示,其中每个节点都包含在工作空间中某些姿势下拍摄的图像,并且边缘连接姿势之间存在简单路径。这种类型的表示具有高度的可伸缩性,也非常适合处理影响基于度量模型的方法的数据关联问题。在本文中,我们提出了一种有效的,自适应的方法,该方法使用基于内容的图像检索技术进行定性定位。此外,我们演示了一种算法,可以通过合并有关闭环的信息将拓扑图转换为环境的度量模型。

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