基于云上迭代最近点算法的不确定环境地图构建

Yi-Jou Wen, C. Hsu, Wei-Yen Wang
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引用次数: 1

摘要

迭代最近点(ICP)算法是一种将两个点集对齐的算法,广泛应用于不确定环境下的地图绘制。但是,原始ICP算法容易受到噪声和离散点的影响,使得对准误差非常大。同时,在激光测距仪(LRF)的行扫描中,累积的数据点越多,对中误差就越大,导致对中结果不理想,且对中耗时长。本文提出了一种基于云上增强型ICP (E-ICP)算法的不确定环境地图构建方法,称为云上的E-ICP,并提出了一种减少重复参考点集的方法。因此,可以大大减少计算负担,提高对准精度,并获得更准确的环境地图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Map building of uncertain environment based on iterative closest point algorithm on the cloud
The Iterative Closest Point (ICP) algorithm is to align for the two point sets, which is widely used in map building of an uncertain environment. However, the original ICP algorithm is easily affected by noise and discrete points, making the error of alignment very large. At the same time, in a row scanning by the Laser Range Finder (LRF), the more data points accumulate, the larger the errors of alignment become, which leads to an unpreferable map, and the process would be time consuming. This paper proposes a map building of an uncertain environment based on an enhanced ICP (E-ICP) algorithm on the cloud, called E-ICP on the cloud, and presented a way to reduce duplicate reference point set. Thus, one can significantly reduce the computational burden, improve the accuracy of alignment, and get a more accurate environmental map.
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