This paper focuses on the application of Discriminant Analysis to a set of geometrical objects (bodies) characterized by currents. A current is a relevant mathematical object to model geometrical data, like hypersurfaces, through integration of vector fields along them. As a consequence of the choice of a vector-valued Reproducing Kernel Hilbert Space (RKHS) as a test space to integrate hypersurfaces, it is possible to consider that hypersurfaces are embedded in this Hilbert space. This embedding enables us to consider classification algorithms of geometrical objects. A method to apply Functional Discriminant Analysis in the obtained vector-valued RKHS is given. This method is based on the eigenfunction decomposition of the kernel. So, the novelty of this paper is the reformulation of a size and shape classification problem in Functional Data Analysis terms using the theory of currents and vector-valued RKHS. This approach is applied to a 3D database obtained from an anthropometric survey of the Spanish child population with a potential application to online sales of children's wear.
翻译:本文侧重于对一组以海流为特征的几何物体(体体)应用分辨分析。 流是一个相关的数学对象,通过将矢量场与矢量场结合, 模拟几何数据, 如超表层。 由于选择了矢量值复制Kernel Hilbert空间(RKHS)作为将超表层结合的测试空间, 因此可以考虑将超表层嵌入这个Hilbert空间。 这种嵌入使我们能够考虑几何物体的分类算法。 给出了一种在获得的矢量值RKHS中应用功能分辨分析的方法。 这个方法基于内核的机能分解。 因此, 本文的新颖之处是在功能数据分析术语中, 使用海流理论和矢量估值RKHS重新确定一个大小和形状分类问题。 这种方法适用于从对西班牙儿童群体进行人类测量调查中获得的3D数据库, 并有可能用于在线销售儿童服装。