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Partial differences as tools for filtering data on graphs

机译:局部差异作为在图上过滤数据的工具

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High-dimensional feature spaces are often corrupted by noise. This is problematic for the processing of manifolds and data sets since most of reference methods (and especially graph-based ones) are sensitive to noise. This paper presents pre-processing methods for manifold denoising and simplification based on discrete analogues of continuous regularization and mathematical morphology. The proposed filtering methods provide a general discrete framework for the filtering of manifolds and data with p-Laplacian regularization and mathematical morphology. With our proposals, one obtains filters that can operate on any high-dimensional unorganized multivariate data. Experiments will show that the proposed approaches are efficient to denoise manifolds and data, to project initial noisy data onto a submanifold, and to ease dimensionality reduction, clustering and classification.
机译:高维特征空间经常被噪声破坏。这对于流形和数据集的处理是有问题的,因为大多数参考方法(尤其是基于图形的参考方法)对噪声敏感。本文提出了基于连续正则化和数学形态学的离散类似物的流形降噪和简化的预处理方法。所提出的滤波方法提供了一种通用的离散框架,用于利用p-Laplacian正则化和数学形态学对流形和数据进行滤波。根据我们的建议,人们可以获得可以对任何高维无组织多元数据进行运算的过滤器。实验将表明,所提出的方法可有效地对流形和数据进行去噪,将初始噪声数据投影到子流形上,并易于进行降维,聚类和分类。

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