A Framework of Student's-t Mixture Model for Accurate and Robust Point Set Registration

Zhiyong Zhou, Guangqiang Chen, G. Fan, Jiansong Ji, Yakang Dai
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Abstract

An accurate and robust point set registration framework using Student's-t mixture model is proposed in this paper due to the Gaussian mixture model being vulnerable by the outliers, noise and the data with longer than normal tails. The key idea of this point set registration framework is to theoretically consider Student's-t mixture model as a generalization of the well know Gaussian mixture model. In the proposed framework, we firstly model the correspondences of two point sets by using Student's-t mixture model, where one point set is considered as data observations and the other one as components of Student's-t mixture model respectively. Secondly, we separate parameters of registration parameters and transformation from the mixture model by using negative log-likelihood function for getting a simple optimization. Thirdly, we get general solutions of registration parameters and transformation in cases of rigid, affine, and non-rigid by EM method. Finally, we show the similarity of deformation parameters between Gaussian mixture model and the proposed framework based on Student's-t mixture models, and theoretically analyze the reason of similarity from the view of the Bayes method. We compare our framework with other state-of-the-art point set registration methods based on finite mixture models on both various 2D and 3D point sets identified from clinical medical images on rigid, affine, and non-rigid cases, where the proposed framework demonstrates its statistical accuracy and robustness, outperforming other competing methods.
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一种精确鲁棒的Student -t混合模型配准框架
针对高斯混合模型容易受到异常值、噪声和长尾数据的影响,提出了一种基于Student -t混合模型的精确、鲁棒的点集配准框架。该配准框架的核心思想是将Student -t混合模型作为高斯混合模型的一种推广。在该框架中,我们首先使用Student -t混合模型对两个点集的对应关系进行建模,其中一个点集作为数据观测值,另一个点集作为Student -t混合模型的组成部分。其次,利用负对数似然函数将配准参数和变换参数从混合模型中分离出来,进行简单优化;第三,利用EM方法得到了刚性、仿射和非刚性三种情况下配准参数和变换的一般解。最后,我们展示了高斯混合模型与基于Student -t混合模型的框架之间变形参数的相似性,并从贝叶斯方法的角度理论上分析了相似的原因。我们将我们的框架与其他基于有限混合模型的最先进的点集配准方法进行了比较,这些模型基于从临床医学图像中识别的刚性、仿射和非刚性病例的各种2D和3D点集,其中所提出的框架展示了其统计准确性和鲁棒性,优于其他竞争方法。
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