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Medical Image Registration Using the Modified Conditional Entropy Measure Combining the Spatial and Intensity Information

机译:结合空间和强度信息的修正条件熵测度进行医学图像配准

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We propose an image registration technique using spatial and intensity information. The registration is conducted by the use of a measure based on the entropy of conditional probabilities. To achieve the registration, we first define a modified conditional entropy (MCE) computed from the joint histograms for the area intensities of two given images. In order to combine the spatial information into a traditional registration measure, we use the gradient vector flow field. Then the MCE is computed from the gradient vector flow intensity (GVFI) combining the gradient information and their intensity values of original images. To evaluate the performance of the proposed registration method, we conduct various experiments with our method as well as existing method based on the mutual information (MI) criteria. We evaluate the precision of MI- and MCE-based measurements by comparing the registration obtained from MR images and transformed CT images. The experimental results show that our proposed method is a more accurate technique.
机译:我们提出一种使用空间和强度信息的图像配准技术。通过使用基于条件概率的熵的度量来进行配准。为了实现配准,我们首先为两个给定图像的面积强度定义一个根据联合直方图计算出的修正条件熵(MCE)。为了将空间信息组合成传统的配准度量,我们使用了梯度矢量流场。然后,通过将梯度信息及其原始图像的强度值组合在一起的梯度矢量流强度(GVFI)计算MCE。为了评估提议的注册方法的性能,我们使用我们的方法以及基于互信息(MI)标准的现有方法进行了各种实验。我们通过比较从MR图像和转换后的CT图像获得的配准,评估基于MI和MCE的测量的精度。实验结果表明,我们提出的方法是一种更准确的技术。

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