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Precision range image registration using a robust surface interpenetration measure and enhanced genetic algorithms

机译:使用强大的表面互穿度测量和增强的遗传算法进行精确范围的图像配准

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This paper addresses the range image registration problem for views having low overlap and which may include substantial noise. The current state of the art in range image registration is best represented by the well-known iterative closest point (ICP) algorithm and numerous variations on it. Although this method is effective in many domains, it nevertheless suffers from two key limitations: it requires prealignment of the range surfaces to a reasonable starting point; and it is not robust to outliers arising either from noise or low surface overlap. This paper proposes a new approach that avoids these problems. To that end, there are two key, novel contributions in this work: a new, hybrid genetic algorithm (GA) technique, including hill climbing and parallel-migration, combined with a new, robust evaluation metric based on surface interpenetration. Up to now, interpenetration has been evaluated only qualitatively; we define the first quantitative measure for it. Because they search in a space of transformations, GA are capable of registering surfaces even when there is low overlap between them and without need for prealignment. The novel GA search algorithm we present offers much faster convergence than prior GA methods, while the new robust evaluation metric ensures more precise alignments, even in the presence of significant noise, than mean squared error or other well-known robust cost functions. The paper presents thorough experimental results to show the improvements realized by these two contributions.
机译:本文针对具有低重叠且可能包含大量噪声的视图解决了范围图像配准问题。范围图像配准的当前技术水平最好由众所周知的迭代最近点(ICP)算法及其上的多种变体来表示。尽管此方法在许多领域都有效,但是它仍然受到两个关键限制:它要求将测距表面预先对齐到合理的起点;而且对于因噪声或表面重叠率低而引起的异常值,鲁棒性也不强。本文提出了一种避免这些问题的新方法。为此,这项工作有两个关键的,新颖的贡献:一种新的混合遗传算法(GA)技术,包括爬山和并行迁移,并结合了基于表面互穿性的新的,可靠的评估指标。到目前为止,对互穿的评估只是定性的;我们为此定义了第一个量化指标。由于它们在变换的空间中进行搜索,因此即使它们之间的重叠率较低且不需要预先对齐,GA仍能够对齐曲面。我们提出的新颖GA搜索算法比以前的GA方法提供了更快的收敛速度,而新的鲁棒性评估指标甚至比均方误差或其他众所周知的鲁棒成本函数也能确保更精确的比对,即使在存在重大噪声的情况下。本文提供了详尽的实验结果,以显示这两个贡献所实现的改进。

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