Intensity-Based Registration of Medical Images Using Penalized Maximum Likelihood

Myungeun Lee, Wanhyun Cho, Sun-Worl Kim, Soohyung Kim, Xin Zhao
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Abstract

We present a registration method in which we use the penalized maximum likelihood (PML) function, as a new measure, defined by the transition probabilities between the image intensities of corresponding pixels in both images. The value of measure is computed from the joint histogram obtained from the intensities of all pixel pairs in the overlapping area of two images and if two images are geometrically aligned, it is probably assumed to have a maximum value. By employing the PML function, we can assign much more weights on transition probabilities which occur in an important overlapping range. Therefore, the proposed registration method will provide a more accurate registration while being more robust to the various degradation environments. The accuracy and robustness of the proposed registration method as well as two other methods such as the mutual information (MI) technique or the maximum likelihood (ML) method are tested on real images. The experimental results show that our approach is more optimal registration method than other methods.
基于强度的医学图像的最大似然惩罚配准
我们提出了一种配准方法,其中我们使用惩罚最大似然(PML)函数作为一种新的度量,由两幅图像中对应像素的图像强度之间的转移概率定义。measure的值是从两幅图像重叠区域中所有像素对的强度得到的联合直方图中计算出来的,如果两幅图像是几何对齐的,则可能假设它有一个最大值。通过使用PML函数,我们可以对发生在重要重叠范围内的转移概率赋予更多的权重。因此,所提出的配准方法将提供更准确的配准,同时对各种退化环境具有更强的鲁棒性。在实际图像上测试了所提出的配准方法以及互信息(MI)技术或最大似然(ML)方法的准确性和鲁棒性。实验结果表明,该方法是一种比其他方法更优的配准方法。
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