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Multi-scale EM-ICP: A Fast and Robust Approach for Surface Registration

机译:多尺度EM-ICP:表面注册的快速和坚固的方法

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We investigate in this article the rigid registration of large sets of points, generally sampled from surfaces. We formulate this problem as a general Maximum-Likelihood (ML) estimation of the transfor-mation and the matches. We show that, in the specific case of a Gaussian noise, it corresponds to the Iterative Closest Point algorithm (ICP) with the Mahalanobis distance. Then, considering matches as a hidden variable, we obtain a slightly more complex criterion that can be efficiently solved using Expectation-Maximization (EM) principles. In the case of a Gaussian noise, this new methods corresponds to an ICP with multiple matches weighted by normalized Gaussian weights, giving birth to the EM-ICP acronym of the method. The variance of the Gaussian noise is a new parameter that can be viewed as a "scale or blurring factor" on our point clouds. We show that EMICP robustly aligns the barycenters and inertia moments with a high variance, while it tends toward the accurate ICP for a small variance. Thus, the idea is to use a multi-scale approach using an annealing scheme on this parameter to combine robustness and accuracy. Moreover, we show that at each "scale", the criterion can be efficiently approximated using a simple decimation of one point set, which drastically speeds up the algorithm. Experiments on real data demonstrate a spectacular improvement of the performances of EM-ICP w.r.t. the standard ICP algorithm in terms of robustness (a factor of 3 to 4) and speed (a factor 10 to 20), with similar performances in precision. Though the multiscale scheme is only justified with EM, it can also be used to improve ICP, in which case the performances reaches then the one of EM when the data are not too noisy.
机译:我们在本文中调查了大套点的刚性登记,通常从表面采样。我们将这个问题作为转型和匹配的一般最大可能性(ml)估计。我们表明,在高斯噪声的具体情况下,它对应于具有Mahalanobis距离的迭代最接近点算法(ICP)。然后,考虑与隐藏变量的匹配,我们获得稍微复杂的标准,可以使用期望最大化(EM)原则有效地解决。在高斯噪声的情况下,这种新方法对应于具有多个匹配的ICP,该ICP由归一化高斯重量加权,从而生出了该方法的EM-ICP首字母缩略词。高斯噪声的方差是一种新参数,可以在我们的点云上被视为“比例或模糊因子”。我们表明EMICP强大地将重心和惯性矩与高方差对齐,而往往朝着小方差的准确ICP倾向于精确的ICP。因此,该想法是使用该参数上的退火方案使用多尺度方法来组合鲁棒性和准确性。此外,我们示出了在每个“刻度”,可以使用一个点集的简单抽取可以有效地近似标准,这使得算法大大加速了算法。实际数据的实验表明了EM-ICP W.R.T的表演的壮观改善。标准ICP算法在鲁棒性(系数3至4)和速度(因子10至20)方面,精度具有相似的性能。虽然MultiScale方案仅用EM合理,但它也可以用于改进ICP,在这种情况下,当数据不太嘈杂时,性能达到EM之一。

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