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Point Set Registration With Similarity and Affine Transformations Based on Bidirectional KMPE Loss

机译:点设置具有相似性和仿射转换的注册,基于双向kmpe丢失

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摘要

Robust point set registration is a challenging problem, especially in the cases of noise, outliers, and partial overlapping. Previous methods generally formulate their objective functions based on the mean-square error (MSE) loss and, hence, are only able to register point sets under predefined constraints (e.g., with Gaussian noise). This article proposes a novel objective function based on a bidirectional kernel mean p-power error (KMPE) loss, to jointly deal with the above nonideal situations. KMPE is a nonsecond-order similarity measure in kernel space and shows a strong robustness against various noise and outliers. Moreover, a bidirectional measure is applied to judge the registration, which can avoid the ill-posed problem when a lot of points converges to the same point. In particular, we develop two effective optimization methods to deal with the point set registrations with the similarity and the affine transformations, respectively. The experimental results demonstrate the effectiveness of our methods.
机译:强大的点设置注册是一个具有挑战性的问题,尤其是在噪声,异常值和部分重叠的情况下。以前的方法通常基于平均方误差(MSE)损耗来配制它们的客观函数,并且因此,仅能够在预定约束(例如,具有高斯噪声)下的点集。本文提出了一种基于双向内核平均P电源误差(KMPE)损失的新颖目标函数,共同处理上述非积极情况。 KMPE是内核空间中的令人愉快的顺序相似度,并对各种噪声和异常值表示强大的稳健性。此外,应用双向措施来判断注册,这可以避免当大量点收敛到同一点时的不良问题。特别是,我们开发了两种有效的优化方法,以分别处理点设置的点设置注册和仿射转换。实验结果表明了我们方法的有效性。

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