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Kernel dictionary learning

机译:内核字典学习

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摘要

In this paper, we present dictionary learning methods for sparse and redundant signal representations in high dimensional feature space. Using the kernel method, we describe how the well-known dictionary learning approaches such as the method of optimal directions and K-SVD can be made nonlinear. We analyze these constructions and demonstrate their improved performance through several experiments on classification problems. It is shown that nonlinear dictionary learning approaches can provide better discrimination compared to their linear counterparts and kernel PCA, especially when the data is corrupted by noise.
机译:在本文中,我们提出了针对高维特征空间中稀疏和冗余信号表示的字典学习方法。使用核方法,我们描述了如何使众所周知的字典学习方法(如最佳方向和K-SVD方法)非线性。我们对这些构造进行了分析,并通过对分类问题的几次实验证明了它们的改进性能。结果表明,与线性字典和内核PCA相比,非线性字典学习方法可以提供更好的辨别力,尤其是当数据被噪声破坏时。

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