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Robust Variants of Dictionary Learning Exploiting M-Estimators

机译:利用M估计器的强大词典学习变体

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We propose a robust alternative the well known dictionary learning technique K-SVD. Specifically, we exploit the theory behind M-Estimators to incorporate robustness into the sparse coding stage of K-SVD, and hence, decrease the estimation bias that might be introduced when outliers are present. Five different M-Estimators are introduced alongside their optimal hyperparameters in order to avoid parameter tuning by the user. In this way, the proposed framework has the same number of free parameters as K-SVD with the added feature of robustness and improved performance in non-Gaussian environments. We thoroughly demonstrate the superiority of the proposed algorithms via recovery of generating dictionaries for synthetic data and image denoising under two types of non-homogenous noise-salt and pepper noise, and impulsive noise.
机译:我们提出了一种强大的替代方法,即众所周知的字典学习技术K-SVD。具体来说,我们利用M估计器背后的理论将鲁棒性纳入K-SVD的稀疏编码阶段,因此减少了出现异常值时可能引入的估计偏差。为了避免用户调整参数,在其最佳超参数的旁边引入了五个不同的M估计器。以这种方式,所提出的框架具有与K-SVD相同数量的自由参数,并具有在非高斯环境中的鲁棒性和改进的性能。我们通过恢复生成合成数据的字典和在两种非均匀噪声(盐和胡椒噪声以及脉冲噪声)下进行图像去噪的方法,充分证明了所提出算法的优越性。

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