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Ensemble image registration by a spatially constrained clustering approach

机译:通过空间约束聚类方法集合图像注册

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摘要

In this article, a novel spatially constrained clustering approach is proposed for ensemble image registration. We use a spatially constrained Gaussian mixture model, which is based on a joint Gaussian mixture model and Markov random field, to model the joint intensity scatter plot of the unregistered images. The spatially constrained Gaussian mixture model has the capability of performing the correlation among neighboring observations. A cost function of reducing the dispersion in the joint intensity scatter plot is proposed using the spatially constrained Gaussian mixture model to simultaneously register a group of images. We derive an expectation maximization algorithm for the proposed model. Computer simulations demonstrate the effectiveness of the proposed method.
机译:在本文中,提出了一种新的空间约束聚类方法,用于集合图像配准。 我们使用空间约束的高斯混合模型,该模型基于联合高斯混合模型和马尔可夫随机场,以模拟未注册的图像的关节强度散点图。 空间约束的高斯混合模型具有在邻近观察结果之间进行相关性的能力。 使用空间约束的高斯混合模型提出减少关节强度散射图中的色散的成本函数,同时注册一组图像。 我们推导出拟议模型的预期最大化算法。 计算机模拟证明了该方法的有效性。

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