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Robust Anatomical Landmark Detection for MR Brain Image Registration

机译:MR脑图像配准的强大解剖地标检测

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Correspondence matching between MR brain images is often challenging due to large inter-subject structural variability. In this paper, we propose a novel landmark detection method for robust establishment of correspondences between subjects. Specifically, we first annotate distinctive landmarks in the training images. Then, we use regression forest to simultaneously learn (1) the optimal set of features to best characterize each landmark and (2) the non-linear mappings from local patch appearances of image points to their displacements towards each landmark. The learned regression forests are used as landmark detectors to predict the locations of these landmarks in new images. Since landmark detection is performed in the entire image domain, our method can cope with large anatomical variations among subjects. We evaluated our method by applying it to MR brain image registration. Experimental results indicate that by combining our method with existing registration method, obvious improvement in registration accuracy can be achieved.
机译:由于受试者之间的结构差异较大,因此磁共振大脑图像之间的对应匹配通常具有挑战性。在本文中,我们提出了一种新的界标检测方法,用于稳固建立对象之间的对应关系。具体来说,我们首先在训练图像中注释独特的地标。然后,我们使用回归森林同时学习(1)最佳特征集以最佳地刻画每个界标,以及(2)从图像点的局部面片外观到它们向每个界标的位移的非线性映射。所学习的回归林用作地标检测器,以预测新图像中这些地标的位置。由于界标检测是在整个图像域中执行的,因此我们的方法可以应对受试者之间较大的解剖变化。我们通过将其应用于MR脑图像配准来评估我们的方法。实验结果表明,通过将我们的方法与现有的配准方法相结合,可以显着提高配准精度。

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