使用语义线索构建基于图像的混合地图的视觉探索算法

Aravindhan K. Krishnan, K. Krishna
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引用次数: 24

摘要

本文提出了一种基于视觉的探索算法,该算法调用语义线索来构建图像的混合地图——语义地图和拓扑地图的结合。在顶层,映射是一个语义结构图。图中的每个节点都是一个语义结构或标签,如房间或走廊,边缘由过渡区域表示,如连接两个语义结构的门口。每个语义节点在其内部嵌入一个拓扑图,该拓扑图构成了中间层的映射。拓扑图是一组节点,每个节点代表一个高级语义结构的图像。在底层,拓扑图嵌入度量值和关系,其中每个节点嵌入拍摄图像的机器人的姿态,图中的任意两个节点通过由旋转和平移组成的变换相互关联。探索算法在移动或分支到一个新结构之前完全探索一个语义结构。在每个语义结构中,它使用基于局部特征的探索算法,该算法结合局部和全局决策来决定下一个最佳移动位置。在探索语义结构的过程中,它识别作为从一个结构移动到另一个结构的网关的转换区域。当所有的过渡区域都被标记为访问时,勘探就被认为完成了。环路检测发生在过渡区域,并使用图松弛技术在检测到环路时关闭环路,以获得机器人姿态的一致度量嵌入。使用视觉词袋(VBOW)表示和概率支持向量机分类器对语义结构进行标记。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A visual exploration algorithm using semantic cues that constructs image based hybrid maps
A vision based exploration algorithm that invokes semantic cues for constructing a hybrid map of images - a combination of semantic and topological maps is presented in this paper. At the top level the map is a graph of semantic constructs. Each node in the graph is a semantic construct or label such as a room or a corridor, the edge represented by a transition region such as a doorway that links the two semantic constructs. Each semantic node embeds within it a topological graph that constitutes the map at the middle level. The topological graph is a set of nodes, each node representing an image of the higher semantic construct. At the low level the topological graph embeds metric values and relations, where each node embeds the pose of the robot from which the image was taken and any two nodes in the graph are related by a transformation consisting of a rotation and translation. The exploration algorithm explores a semantic construct completely before moving or branching onto a new construct. Within each semantic construct it uses a local feature based exploration algorithm that uses a combination of local and global decisions to decide the next best place to move. During the process of exploring a semantic construct it identifies transition regions that serve as gateways to move from that construct to another. The exploration is deemed complete when all transition regions are marked visited. Loop detection happens at transition regions and graph relaxation techniques are used to close loops when detected to obtain a consistent metric embedding of the robot poses. Semantic constructs are labeled using a visual bag of words(VBOW) representation with a probabilistic SVM classifier.
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