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Non-Rigid Point Set Registration with Robust Transformation Estimation under Manifold Regularization

机译:非刚性点设置注册,具有歧管正则化下的鲁棒变换估计

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In this paper, we propose a robust transformation estimation method based on manifold regularization for non-rigid point set registration. The method iteratively recovers the point correspondence and estimates the spatial transformation between two point sets. The correspondence is established based on existing local feature descriptors which typically results in a number of outliers. To achieve an accurate estimate of the transformation from such putative point correspondence, we formulate the registration problem by a mixture model with a set of latent variables introduced to identify outliers, and a prior involving manifold regularization is imposed on the transformation to capture the underlying intrinsic geometry of the input data. The non-rigid transformation is specified in a reproducing kernel Hilbert space and a sparse approximation is adopted to achieve a fast implementation. Extensive experiments on both 2D and 3D data demonstrate that our method can yield superior results compared to other state-of-the-arts, especially in case of badly degraded data.
机译:在本文中,我们提出了一种基于非刚性点设置注册的歧管正则化的鲁棒变换估计方法。该方法迭代地恢复点对应,并估计两个点集之间的空间变换。该对应关系是基于现有的本地特征描述符建立,其通常会导致多个异常值。为了实现从这种推定点对应的转换的准确估计,我们通过引入的一组潜变变量来制定注册问题以识别异常值,并施加在转换上以捕获基本内在的涉及歧管正则化以捕获基本内在的输入数据的几何。非刚性变换在再现内核希尔伯特空间中指定,采用稀疏近似以实现快速实现。关于2D和3D数据的广泛实验表明,与其他最先进的数据相比,我们的方法可以产生卓越的结果,特别是在严重降级的数据的情况下。

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