马尔可夫定位的全局和局部图像特征决策融合

Zeng-Shun Zhao
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引用次数: 1

摘要

本文解决了视觉机器人定位中的一个主要问题。基于视觉的定位在大规模环境中容易导致歧义。提出了一种基于概率的移动机器人场景识别拓扑定位方法。基于外观的场景类自动从合成特征中学习,这些合成特征结合了从训练图像中提取的全局和局部图像特征。将颜色与局部结构相结合的改进尺度不变特征变换(SIFT)特征描述符作为局部特征,消除了识别中容易混淆的特征的歧义。环境被定义为一个拓扑图,其中每个节点对应一个位置,边是连接一个节点与另一个节点的路径。在旅行过程中,每个检测到的兴趣点投票给最可能的位置,正确的位置是获得最多票数的位置。在感知混叠的情况下,使用隐马尔可夫模型(HMM)来提高位置识别的鲁棒性。实验结果表明,将该特征与决策融合相结合,可以有效地减少错误匹配。
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Decision fusion of global and local image features for Markov localization
This paper addresses a major problem in the context of visual robot localization. Vision-based localization easily leads to ambiguities in large-scale environments. A probabilistic method is proposed for mobile robots to recognize scenes for topological localization. Appearance-based scene classes are automatically learned from composite features which combine global and local image features extracted from sets of training images. A modified Scale Invariant Feature Transform (SIFT) feature descriptor, which integrates color with local structure, is used as local features to disambiguate the identification of features easily confused. The environment is defined as a topological graph where each node corresponds to a place and edges are paths connecting one node with another. In the course of traveling, each detected interest point vote for the most likely location, and the correct location is the one getting the largest number of votes. In the case of perceptual aliasing, a Hidden Markov Model (HMM) is used to increase the robustness of location recognition. Experimental results show that application of the proposed feature and decision fusion can largely reduce wrong matches and the proposed method is effective.
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