Abi-Nahed Julien, Jolly Marie-Pierre, Yang Guang-Zhong
Imaging and Visualization Department, Siemens Corporate Research Princeton, New Jersey, USA.
Med Image Comput Comput Assist Interv. 2006;9(Pt 2):1-8. doi: 10.1007/11866763_1.
This paper presents a new segmentation algorithm which combines active shape model and robust point matching techniques. It can use any simple feature detector to extract a large number of feature points in the image. Robust point matching is then used to search for the correspondences between feature and model points while the model is being deformed along the modes of variation of the active shape model. Although the algorithm is generic, it is particularly suited for medical imaging applications where prior knowledge is available. The value of the proposed method is examined with two different medical imaging modalities (Ultrasound, MRI) and in both 2D and 3D. The experiments have shown that the proposed algorithm is immune to missing feature points and noise. It has demonstrated significant improvements when compared to RPM-TPS and ASM alone.
本文提出了一种结合主动形状模型和鲁棒点匹配技术的新分割算法。它可以使用任何简单的特征检测器在图像中提取大量特征点。然后,在模型沿着主动形状模型的变化模式变形时,使用鲁棒点匹配来搜索特征点与模型点之间的对应关系。虽然该算法是通用的,但它特别适用于有先验知识可用的医学成像应用。使用两种不同的医学成像模态(超声、磁共振成像)以及二维和三维对所提出方法的价值进行了检验。实验表明,所提出的算法对特征点缺失和噪声具有免疫力。与单独的RPM-TPS和ASM相比,它已显示出显著的改进。