首页> 外文会议>International Conference on Image Processing >CONSTRUCTION OF A LINEAR UNBIASED DIFFEOMORPHIC PROBABILISTIC LIVER ATLAS FROM CT IMAGES
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CONSTRUCTION OF A LINEAR UNBIASED DIFFEOMORPHIC PROBABILISTIC LIVER ATLAS FROM CT IMAGES

机译:从CT图像构建线性无偏见的弥漫型概率肝脏地图集

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The construction of probabilistic liver atlases has received little attention in the past. Existing methods are based on landmarks and are sensitive to their choices and placements. We propose an iterative landmark-free method based on dense volumes to construct linear unbiased diffeomorphic probabilistic atlases from liver CT images. The linear averaging of the transformed images is set as the common target space followed by pairwise diffeomorphic registrations to warp all images to the target using a recent-proposed efficient deformation approach during each iteration cycle. Iterative pairwise registrations are directly used to handle possible large deformations without the need for an extra step to remove global deformations such as the use of affine transformations in traditional methods. Compared with those approaches estimating the unbiased atlas and the transformations groupwise simultaneously, the current method is more efficient. The efficiency and the convergence of our method have been demonstrated experimentally by validation using 25 CT liver sets.
机译:概率肝脏壳种的构建在过去接受了很少的关注。现有方法基于地标,对其选择和放置敏感。我们提出了一种基于密集体积的迭代地标的方法,从肝CT图像构建线性非偏见的扩散概率概率概率。变换图像的线性平均被设定为公共目标空间,然后是在每次迭代周期期间使用最近提出的高效变形方法将所有图像遍及到目标。迭代成对注册直接用于处理可能的大变形,而无需额外的步骤,以消除在传统方法中诸如使用仿射变换的全局变形。与估计未偏见的地图集的方法和同时转换的方法相比,电流方法更有效。通过使用25ct肝脏套进行实验证明了我们方法的效率和收敛性。

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