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A supervised correspondence method for statistical shape model building

机译:统计形状模型建立的监督对应方法

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The construction of statistical shape model (SSM) is an important research topic in medical imaging benefited from its robust and nature represent of anatomical structures. Place-march of corresponding landmarks is one of the major factors influencing 3D SSM quality. In this paper, we present a supervised correspondence method for fast building SSM, which includes two main steps, i.e., surface data alignment and landmarks specified based on surface parameterization. The framework is validated with statistical models of the liver constructed from contrast CT images. The experiment results demonstrate that the generated model is statistical and anatomically meaningful.
机译:统计形状模型(SSM)的构建是医学成像的重要研究课题,这要归功于其强大的结构结构和自然的表现形式。相应地标的地标行进是影响3D SSM质量的主要因素之一。在本文中,我们提出了一种用于快速构建SSM的监督对应方法,该方法包括两个主要步骤,即表面数据对齐和基于表面参数化指定的界标。通过对比CT图像构建的肝脏统计模型验证了该框架。实验结果表明,所生成的模型具有统计意义和解剖学意义。

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