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Nonrigid Point Set Registration With Robust Transformation Learning Under Manifold Regularization

机译:流形正则化下具有鲁棒变换学习的非刚性点集配准

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摘要

This paper solves the problem of nonrigid point set registration by designing a robust transformation learning scheme. The principle is to iteratively establish point correspondences and learn the nonrigid transformation between two given sets of points. In particular, the local feature descriptors are used to search the correspondences and some unknown outliers will be inevitably introduced. To precisely learn the underlying transformation from noisy correspondences, we cast the point set registration into a semisupervised learning problem, where a set of indicator variables is adopted to help distinguish outliers in a mixture model. To exploit the intrinsic structure of a point set, we constrain the transformation with manifold regularization which plays a role of prior knowledge. Moreover, the transformation is modeled in the reproducing kernel Hilbert space, and a sparsity-induced approximation is utilized to boost efficiency. We apply the proposed method to learning motion flows between image pairs of similar scenes for visual homing, which is a specific type of mobile robot navigation. Extensive experiments on several publicly available data sets reveal the superiority of the proposed method over state-of-the-art competitors, particularly in the context of the degenerated data.
机译:通过设计鲁棒的变换学习方案,解决了非刚性点集的注册问题。原理是迭代建立点对应关系并学习两个给定点集之间的非刚性变换。特别地,使用局部特征描述符来搜索对应关系,并且不可避免地会引入一些未知的离群值。为了精确地从嘈杂的对应关系中学习潜在的转换,我们将点集注册转换为半监督的学习问题,其中采用了一组指标变量来帮助区分混合模型中的离群值。为了利用点集的内在结构,我们用具有先验知识作用的流形正则化约束转换。此外,在复制内核Hilbert空间中对转换进行建模,并利用稀疏性近似来提高效率。我们将提出的方法应用于学习相似场景的图像对之间的运动流以进行视觉归位,这是移动机器人导航的一种特殊类型。在几个公开可用的数据集上进行的大量实验表明,所提出的方法优于最新的竞争对手,尤其是在退化数据的情况下。

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