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The mixtures of Student's t-distributions as a robust framework for rigid registration

机译:学生t分布的混合体作为刚性注册的可靠框架

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摘要

The problem of registering images or point sets is addressed. At first, a pixel similarity-based algorithm for the rigid registration between single and multimodal images is presented. The images may present dissimilarities due to noise, missing data or outlying measures. The method relies on the partitioning of a reference image by a Student's t-mixture model (SMM). This partition is then projected onto the image to be registered. The main idea is that a t-component in the reference image corresponds to a t-component in the image to be registered. If the images are correctly registered the distances between the corresponding components is minimized. Moreover, the extension of the method to the registration of point clouds is also proposed. The use of SMM components is justified by the property that they have heavier tails than standard Gaussians, thus providing robustness to outliers. Experimental results indicate that, even in the case of low SNR or important amount of dissimilarities due to temporal changes, the proposed algorithm compares favorably to the mutual information method for image registration and to the Iterative Closest Points (ICP) algorithm for the alignment of point sets.
机译:解决了注册图像或点集的问题。首先,提出了一种基于像素相似度的单模态和多模态图像之间刚性配准的算法。图像可能由于噪声,数据丢失或外围措施而存在差异。该方法依赖于参考图像通过学生t混合模型(SMM)的划分。然后将该分区投影到要注册的图像上。主要思想是参考图像中的t分量对应于要配准的图像中的t分量。如果图像正确配准,则相应组件之间的距离会最小化。此外,还建议将该方法扩展到点云的配准。 SMM组件的使用通过以下特性证明是合理的:它们的尾部比标准高斯函数重,从而为异常值提供了鲁棒性。实验结果表明,即使在信噪比较低或因时间变化而导致大量差异的情况下,该算法也比互信息方法进行图像配准和迭代最近点(ICP)算法更有利。套。

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