A reliable feature matching method in omnidirectional views for autonomous map generation of a mobile robot

Young Jin Lee, M. Chung
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引用次数: 6

Abstract

Deals with a matching problem of finding correspondences of features in two omnidirectional images. The proposed method combines the advantages of correlation-based matching and dynamic programming to yield reliable matching results. Our method works well even when some features in one image don't have corresponding features in the other. The search space of the dynamic programming can be reduced by the geometric constraints that the omnidirectional vision sensor provides. We also present a recursive scheme for position estimation of the matched features, so that on-line map generation is possible. Experimental results show that zero failure rate of matching in an indoor environment can be obtained and that a feature-drawing map can be successfully constructed by the proposed feature matching algorithm and map building method.
面向移动机器人自主地图生成的全向视图特征匹配方法
研究了寻找两幅全向图像特征对应关系的匹配问题。该方法结合了基于关联的匹配和动态规划的优点,得到了可靠的匹配结果。即使一幅图像中的某些特征在另一幅图像中没有相应的特征,我们的方法也能很好地工作。全向视觉传感器提供的几何约束可以减小动态规划的搜索空间。我们还提出了一种递归的匹配特征位置估计方案,从而使在线地图生成成为可能。实验结果表明,本文提出的特征匹配算法和地图构建方法在室内环境下的匹配失败率为零,可以成功构建特征绘制地图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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