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Local coordinate based graph-regularized NMF for image representation

机译:基于局部坐标的图正则化NMF用于图像表示

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摘要

Non-negative matrix factorization (NMF) has been a powerful data representation tool which has been widely applied in pattern recognition and computer vision due to its simplicity and effectiveness. However, existing NMF methods suffer from one or both of the following deficiencies: (1) they cannot theoretically guarantee the decomposition results to be sparse, and (2) they completely neglect geometric structure of data, especially when some examples are heavily corrupted. In this paper, we propose a local coordinate based graph regularized NMF method (LCGNMF) to simultaneously overcome both deficiencies. In particular, LCGNMF enforces the learned coefficients to be sparse by incorporating the local coordinate constraint over both factors meanwhile preserving the geometric structure of the data by incorporating graph regularization. To enhance the robustness of NMF, LCGNMF removes the effect of the outliers via the maximum cor-rentropy criterion (MCC). LCGNMF is difficult because the MCC induced objective function is neither quadratic nor convex. We therefore developed a multiplicative update rule to solve LCGNMF and theoretically proved its convergence. Experiments of image clustering on several popular image datasets verify the effectiveness of LCGNMF compared to the representative methods in quantities.
机译:非负矩阵分解(NMF)是一种功能强大的数据表示工具,由于其简单性和有效性,已广泛应用于模式识别和计算机视觉。但是,现有的NMF方法存在以下一个或两个缺陷:(1)从理论上讲不能保证分解结果稀疏;(2)它们完全忽略了数据的几何结构,尤其是当某些示例严重损坏时。在本文中,我们提出了一种基于局部坐标的图正则化NMF方法(LCGNMF),以同时克服这两个缺陷。尤其是,LCGNMF通过在两个因素上合并局部坐标约束来使学习的系数变得稀疏,同时通过合并图正则化来保留数据的几何结构。为了增强NMF的鲁棒性,LCGNMF通过最大Cor熵标准(MCC)消除了异常值的影响。 LCGNMF很难,因为MCC引起的目标函数既不是二次也不是凸的。因此,我们开发了一个乘法更新规则来解决LCGNMF并从理论上证明了其收敛性。与代表性方法相比,在多个流行图像数据集上进行图像聚类的实验证明了LCGNMF的有效性。

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