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首页> 外文期刊>Pattern Analysis and Machine Intelligence, IEEE Transactions on >Convergent Iterative Closest-Point Algorithm to Accomodate Anisotropic and Inhomogenous Localization Error
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Convergent Iterative Closest-Point Algorithm to Accomodate Anisotropic and Inhomogenous Localization Error

机译:收敛的迭代最近点算法来适应各向异性和非均匀的定位误差

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摘要

Since its introduction in the early 1990s, the Iterative Closest Point (ICP) algorithm has become one of the most well-known methods for geometric alignment of 3D models. Given two roughly aligned shapes represented by two point sets, the algorithm iteratively establishes point correspondences given the current alignment of the data and computes a rigid transformation accordingly. From a statistical point of view, however, it implicitly assumes that the points are observed with isotropic Gaussian noise. In this paper, we show that this assumption may lead to errors and generalize the ICP such that it can account for anisotropic and inhomogenous localization errors. We 1) provide a formal description of the algorithm, 2) extend it to registration of partially overlapping surfaces, 3) prove its convergence, 4) derive the required covariance matrices for a set of selected applications, and 5) present means for optimizing the runtime. An evaluation on publicly available surface meshes as well as on a set of meshes extracted from medical imaging data shows a dramatic increase in accuracy compared to the original ICP, especially in the case of partial surface registration. As point-based surface registration is a central component in various applications, the potential impact of the proposed method is high.
机译:自1990年代初期推出以来,迭代最近点(ICP)算法已成为3D模型几何对齐的最著名方法之一。给定由两个点集表示的两个大致对齐的形状,在给定当前数据对齐方式的情况下,该算法迭代地建立点对应关系,并据此计算刚性变换。但是,从统计的角度来看,它隐含地假设这些点是在各向同性的高斯噪声下观测到的。在本文中,我们证明了这种假设可能会导致误差,并推广ICP,从而可以解决各向异性和非均匀的定位误差。我们1)提供算法的正式描述,2)将其扩展到部分重叠的曲面的配准,3)证明其收敛性,4)得出一组选定应用程序所需的协方差矩阵,以及5)提供用于优化算法的方法运行。对公开可用的表面网格以及从医学成像数据中提取的一组网格的评估显示,与原始ICP相比,准确性显着提高,尤其是在部分表面配准的情况下。由于基于点的表面配准是各种应用程序的核心组成部分,因此该方法的潜在影响很大。

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