Support vector machine for data on manifolds: An application to image analysis

S. Sen, M. Foskey, J. Marron, M. Styner
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引用次数: 15

Abstract

The Support Vector Machine (SVM) is a powerful tool for classification. We generalize SVM to work with data objects that are naturally understood to be lying on curved manifolds, and not in the usual d-dimensional Euclidean space. Such data arise from medial representations (m-reps) in medical images, Diffusion Tensor-MRI (DT-MRI), diffeomorphisms, etc. Considering such data objects to be embedded in higher dimensional Euclidean space results in invalid projections (on the separating direction) while Kernel Embedding does not provide a natural separating direction. We use geodesic distances, defined on the manifold to formulate our methodology. This approach addresses the important issue of analyzing the change that accompanies the difference between groups by implicitly defining the notions of separating surface and separating direction on the manifold. The methods are applied in shape analysis with target data being m-reps of 3 dimensional medical images.
流形上数据的支持向量机:在图像分析中的应用
支持向量机(SVM)是一种强大的分类工具。我们将支持向量机推广到那些自然被理解为位于弯曲流形上的数据对象,而不是在通常的d维欧几里德空间中。这些数据来自医学图像中的中间表示(m-reps)、扩散张量- mri (DT-MRI)、微分同态等。考虑到将这些数据对象嵌入到高维欧几里德空间中会导致无效的投影(在分离方向上),而核嵌入没有提供自然的分离方向。我们使用在流形上定义的测地线距离来制定我们的方法。这种方法通过隐式地定义流形上的分离表面和分离方向的概念,解决了分析组间差异所伴随的变化的重要问题。将该方法应用于目标数据为三维医学图像m-代表的形状分析中。
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