K-means based RANSAC Algorithm for ICP Registration of 3D Point Cloud with Dense Outliers

Chao-Chung Peng
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引用次数: 1

Abstract

In this work, a strategy for the 3D point cloud registration in the presence of multiple groups of outliers is addressed. Regarding to the point cloud registration, the iterative closed point (ICP) is a frequently used algorithm. Many related works have pointed out that robust point cloud matching can be achieved by using correspondence weight design or some other feature extraction techniques. However, it is interesting that whether it is possible to use traditional point-to-point ICP to deal with the point cloud registration in the presence of dense outlier clusters even without the aid of ICP weight design or point cloud feature extraction. To solve this question, a K-means based random sample consensus (RANSAC) strategy is presented. For a given data point clouds with high dense outliers, the K-means is firstly applied to cluster the point clouds. After that, the registration process cooperates with RANSAC's random cluster sampling for ICP matching, and calculates the sample with the highest matching score as the best candidate for point cloud matching. Here, we name this procedure as K-means based RANSAC ICP (KR-ICP). Through this point cloud registration strategy, the influence of multiple clusters of dense outliers on ICP registration can be avoided. Finally, this study verified the feasibility of this strategy via simulations. The proposed scheme can be extended to the related applications of point cloud initial pose alignment.
基于K-means的密集离群点云三维ICP配准RANSAC算法
在这项工作中,解决了存在多组异常值的3D点云配准策略。在点云配准中,迭代闭点(ICP)是一种常用的配准算法。许多相关研究指出,采用对应权值设计或其他特征提取技术可以实现鲁棒的点云匹配。然而,有趣的是,在没有ICP权值设计或点云特征提取的情况下,是否可以使用传统的点对点ICP来处理存在密集离群点簇的点云配准。为了解决这一问题,提出了一种基于k均值的随机样本一致性策略。对于具有高密度离群点的数据点云,首先应用K-means对点云进行聚类。之后,配准过程配合RANSAC随机聚类抽样进行ICP匹配,计算出匹配得分最高的样本作为点云匹配的最佳候选。在这里,我们将此过程命名为基于k均值的RANSAC ICP (KR-ICP)。通过这种点云配准策略,可以避免多簇密集离群值对ICP配准的影响。最后,本研究通过仿真验证了该策略的可行性。该方法可推广到点云初始位姿对准的相关应用中。
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