Robust Automatic Data Decomposition Using A Modified Sparse Nmf

MIRAGE'07: Proceedings of the 3rd international conference on Computer vision/computer graphics collaboration techniques(2007)

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摘要
In this paper, we address the problem of automating the partial representation from real world data with an unknown a priori structure. Such representation could be very useful for the further construction of an automatic hierarchical data model. We propose a three stage process using data normalisation and the data intrinsic dimensionality estimation as the first step. The second stage uses a modified sparse Non-negative matrix factorization (sparse NMF) algorithm to perform the initial segmentation. At the final stage region growing algorithm is applied to construct a mask of the original data. Our algorithm has a very broad range of a potential applications, we illustrate this versatility by applying the algorithm to several dissimilar data sets.
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关键词
Basis Vector, Nonnegative Matrix Factorization, Head Data, Pattern Recognition Letter, Intrinsic Dimensionality
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