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Unsupervised Riemannian Clustering of Probability Density Functions

机译:概率密度函数的无监督的riemannian聚类

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We present an algorithm for grouping families of probability density functions (pdfs). We exploit the fact that under the square-root re-parametrization, the space of pdfs forms a Riemannian manifold, namely the unit Hilbert sphere. An immediate consequence of this re-parametrization is that different families of pdfs form different submanifolds of the unit Hilbert sphere. Therefore, the problem of clustering pdfs reduces to the problem of clustering multiple sub-manifolds on the unit Hilbert sphere. We solve this problem by first learning a low-dimensional representation of the pdfs using generalizations of local nonlinear dimensionality reduction algorithms from Euclidean to Riemannian spaces. Then, by assuming that the pdfs from different groups are separated, we show that the null space of a matrix built from the local representation gives the segmentation of the pdfs. We also apply of our approach to the texture segmentation problem in computer vision.
机译:我们提出了一种用于对概率密度函数(PDF)的分组族进行分组算法。我们利用这一事实,即在平方根重新参数化下,PDF的空间形成了riemannian歧管,即单位贝尔伯特球体。这种重新参加参数化的直接后果是PDF的不同家庭形成单位希尔伯特球体的不同子胺属。因此,聚类PDF的问题减少了对单位Hilbert球体上的多个子歧管的问题。我们通过首先使用欧几里德到黎曼空间的欧几里德的局部非线性维度减少算法的概括地学习PDF的低维表示来解决这个问题。然后,假设分离来自不同组的PDF,我们显示从本地表示构建的矩阵的空空格给出了PDF的分割。我们还申请了计算机愿景中纹理分割问题的方法。

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