首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A topology preserving non-rigid registration algorithm with integration shape knowledge to segment brain subcortical structures from MRI images
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A topology preserving non-rigid registration algorithm with integration shape knowledge to segment brain subcortical structures from MRI images

机译:具有整合形状知识的拓扑保留非刚性配准算法,用于从MRI图像中分割大脑皮层下结构

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摘要

A new non-rigid registration method combining image intensity and a priori shape knowledge of the objects in the image is proposed. This method, based on optical flow theory, uses a topology correction strategy to prevent topological changes of the deformed objects and the a priori shape knowledge to keep the object shapes during the deformation process. Advantages of the method over classical intensity based non-rigid registration are that it can improve the registration precision with the a priori knowledge and allows to segment objects at the same time, especially efficient in the case of segmenting adjacent objects having similar intensities. The proposed algorithm is applied to segment brain subcortical structures from 15 real brain MRI images and evaluated by comparing with ground truths. The obtained results show the efficiency and robustness of our method.
机译:提出了一种结合图像强度和图像中物体先验形状知识的非刚性配准方法。该方法基于光流理论,使用拓扑校正策略来防止变形对象的拓扑变化,并使用先验形状知识来在变形过程中保持对象形状。该方法相对于基于经典强度的非刚性配准的优点在于,它可以利用先验知识来提高配准精度,并允许同时分割物体,特别是在分割具有相似强度的相邻物体的情况下尤其有效。该算法被用于从15张真实的大脑MRI图像中分割大脑皮层下结构,并通过与地面真实情况进行比较进行评估。获得的结果表明了我们方法的有效性和鲁棒性。

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