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Neighborhood Preserving Non-negative Tensor Factorization for image representation

机译:邻域保留非负张量分解用于图像表示

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Non-negative Matrix Factorization (NMF) has become a powerful tool for image representation due to its enhanced semantic interpretability under non-negativity. Unfortunately, two types of neighborhood information essential to representation are lost in NMF. For individual image, the local structure information is missing in the vectorization, which can then be avoided by Non-negative Tensor Factorization (NTF). For image data points, they often reside on a low dimensional submanifold embedded in a high dimensional ambient space. NMF and NTF are incapable of encoding the local geometrical information, which can nevertheless be resuscitated by manifold learning. To simultaneously model both of the neighborhood relationship within and among image data, this paper proposes a novel algorithm called Neighborhood Preserving Non-negative Tensor Factorization (NPNTF) by incorporating locally linear embedding regularization into tensor factorization. Experimental results on image clustering show the superior performance of NPNTF with more natural and discriminating representation ability.
机译:非负矩阵因式分解(NMF)由于在非负性条件下增强了语义可解释性,因此已成为图像表示的强大工具。不幸的是,NMF中丢失了两种对于表示至关重要的邻域信息。对于单个图像,局部结构信息在矢量化过程中丢失,然后可以通过非负张量因子分解(NTF)避免这种情况。对于图像数据点,它们通常驻留在嵌入高维环境空间的低维子流形上。 NMF和NTF无法编码局部几何信息,但是可以通过多种学习来恢复。为了同时对图像数据中和图像数据之间的邻域关系进行建模,本文提出了一种新的算法,即将局部线性嵌入正则化与张量因子分解相结合,从而实现了邻域保留非负张量因子分解(NPNTF)。图像聚类的实验结果表明,NPNTF具有优越的性能,具有更自然和可区分的表示能力。

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