首页> 外文会议>Conference on Artificial Intelligence in Medicine(AIME 2005); 20050723-27; Aberdeen(GB) >Morphometry of the Hippocampus Based on a Deformable Model and Support Vector Machines
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Morphometry of the Hippocampus Based on a Deformable Model and Support Vector Machines

机译:基于可变形模型和支持向量机的海马形态学

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This paper presents an effective representation scheme for the statistical shape analysis of the hippocampal structure and its shape classification: Morphometry of the hippocampus. The deformable model based on FEM (Finite Element Method) and ICP (Iterative Closest Point) algorithm allows us to represent parametric surfaces and to normalize multi-resolution shapes. Such deformable surfaces and 3D skeletons extracted from the voxel representations are stored in the Octree data structure. And, it will be used for the hierarchical shape analysis. We have trained SVM (Support Vector Machine) for classifying between the control and patient groups. Results suggest that the presented representation scheme provides various level of shape representation and SVM can be a useful classifier in analyzing the statistical shape of the hippocampus.
机译:本文提出了一种有效的表示方案,用于海马结构的统计形状分析及其形状分类:海马形态。基于FEM(有限元方法)和ICP(迭代最近点)算法的可变形模型使我们能够表示参数化曲面并规范化多分辨率形状。从体素表示中提取的此类可变形曲面和3D骨架存储在Octree数据结构中。并且,它将用于层次形状分析。我们已经对SVM(支持向量机)进行了培训,以对控制组和患者组进行分类。结果表明,所提出的表示方案提供了各种级别的形状表示,并且SVM可以作为分析海马统计形状的有用分类器。

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