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An Adaptive Monte Carlo Approach to Phase-Based Multimodal Image Registration

机译:基于相位的多峰图像配准的自适应蒙特卡洛方法

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摘要

In this paper, a novel multiresolution algorithm for registering multimodal images, using an adaptive Monte Carlo scheme is presented. At each iteration, random solution candidates are generated from a multidimensional solution space of possible geometric transformations, using an adaptive sampling approach. The generated solution candidates are evaluated based on the Pearson type-VII error between the phase moments of the images to determine the solution candidate with the lowest error residual. The multidimensional sampling distribution is refined with each iteration to produce increasingly more plausible solution candidates for the optimal alignment between the images. The proposed algorithm is efficient, robust to local optima, and does not require manual initialization or prior information about the images. Experimental results based on various real-world medical images show that the proposed method is capable of achieving higher registration accuracy than existing multimodal registration algorithms for situations, where little to no overlapping regions exist.
机译:本文提出了一种新的多分辨率图像配准多峰图像,使用自适应蒙特卡洛方案。在每次迭代中,使用自适应采样方法从可能的几何变换的多维解空间生成随机解候选。基于图像的相位矩之间的Pearson VII型误差来评估生成的候选解,以确定具有最低误差残差的候选解。多维采样分布在每次迭代中都会得到完善,以生成越来越合理的候选解决方案,以实现图像之间的最佳对齐。所提出的算法是有效的,对局部最优是鲁棒的,并且不需要手动初始化或关于图像的先验信息。基于各种现实世界医学图像的实验结果表明,与现有的多模式配准算法相比,在几乎没有重叠区域的情况下,该方法能够实现更高的配准精度。

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