首页> 外文会议>International Workshop on Biomedical Image Registration(WBIR 2006); 20060709-11; Utrecht(NL) >Point Similarity Measures Based on MRF Modeling of Difference Images for Spline-Based 2D-3D Rigid Registration of X-Ray Fluoroscopy to CT Images
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Point Similarity Measures Based on MRF Modeling of Difference Images for Spline-Based 2D-3D Rigid Registration of X-Ray Fluoroscopy to CT Images

机译:基于差值图像的MRF建模的点相似性度量,用于基于样条的2D-3D X射线透视对CT图像的刚性配准

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One of the main factors that affect the accuracy of intensity-based registration of two-dimensional (2D) X-ray fluoroscopy to three-dimensional (3D) CT data is the similarity measure, which is a criterion function that is used in the registration procedure for measuring the quality of image match. This paper presents a unifying framework for rationally deriving point similarity measures based on Markov random field (MRF) modeling of difference images which are obtained by comparing the reference fluoroscopic images with their associated digitally reconstructed radiographs (DRR's). The optimal solution is defined as the maximum a posterior (MAP) estimate of the MRF. Three novel point similarity measures derived from this framework are presented. They are evaluated using a phantom and a human cadaveric specimen. Combining any one of the newly proposed similarity measures with a previously introduced spline-based registration scheme, we develop a fast and accurate registration algorithm. We report their capture ranges, converging speeds, and registration accuracies.
机译:影响基于强度的二维(2D)X射线透视与三维(3D)CT数据配准的准确性的主要因素之一是相似度,这是配准中使用的标准函数测量图像匹配质量的步骤。本文提出了一个基于差分图像的马尔可夫随机场(MRF)建模的合理推导点相似性度量的统一框架,该差分图像是通过将参考荧光透视图像与其相关的数字重建X射线照片(DRR)进行比较而获得的。最佳解决方案定义为MRF的最大后验(MAP)估计。提出了从该框架派生的三种新颖的点相似性度量。使用体模和人体尸体标本对它们进行评估。将任何一种新提出的相似性度量与先前引入的基于样条的配准方案相结合,我们开发了一种快速而准确的配准算法。我们报告它们的捕获范围,收敛速度和注册准确性。

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