Robust point set registration method based on global structure and local constraints

Kai Yang, Yufei Chen, Haotian Zhang, Xianhui Liu, Weidong Zhao
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引用次数: 1

Abstract

Background and Objectives: Point set registration is a very fundamental problem in computer vision. The registration problem can be divided into rigid and nonrigid registration. The transformation function modeling of rigid registration is simpler, whereas the nonrigid registration is better to solve the practical problems. Materials and Methods: We proposed a robust point set registration method using both global and local structures. Here, we use a popular probability model, Gaussian mixture model, to preserve the global structure of point set. Then, we designed a local constraint provided by some neighboring points to maintain the local structure of the point set. Finally, expectation–maximization algorithm is used to update model parameters in our method. Results: First of all, we carried out experiments on the synthesized data, which included four degradation cases: deformation, noise, outlier, and rotation. By comparing the mean and standard deviation of registration errors with the several state-of-the-art methods, our method was proved to have stronger robustness. Then, we conducted experiments on real retinal fundus images, aiming to establish reliable feature point correspondence between the two images. The experimental results show that we perform better when the two images have larger shooting angles and more noises. Conclusions: The Gaussian mixture protects the global structure of the point set, and the local constraints make full use of the local structure, which makes our method more robust. Experiments on synthetic data prove that our method obtains superior results to those of the state-of-the-art methods. Experiments on retinal image data show that our method also performs very well in practical applications.
基于全局结构和局部约束的鲁棒点集配准方法
背景与目的:点集配准是计算机视觉中一个非常基础的问题。配准问题可分为刚性配准和非刚性配准。刚性配准的变换函数建模更简单,而非刚性配准更能解决实际问题。材料和方法:我们提出了一种基于全局和局部结构的鲁棒点集配准方法。在这里,我们使用一种流行的概率模型——高斯混合模型来保持点集的全局结构。然后,我们设计了一个由邻近点提供的局部约束来保持点集的局部结构。最后,利用期望最大化算法对模型参数进行更新。结果:首先,我们对合成的数据进行了实验,包括变形、噪声、离群点和旋转四种退化情况。通过比较几种最新方法的配准误差均值和标准差,证明了该方法具有较强的鲁棒性。然后,我们对真实的视网膜眼底图像进行实验,旨在建立两幅图像之间可靠的特征点对应关系。实验结果表明,当两幅图像具有较大的拍摄角度和较多的噪声时,我们的性能更好。结论:高斯混合保护了点集的全局结构,局部约束充分利用了局部结构,增强了方法的鲁棒性。在综合数据上的实验证明,该方法的结果优于现有的方法。在视网膜图像数据上的实验表明,该方法在实际应用中也有很好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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