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Robust Variants of Dictionary Learning Exploiting M-Estimators

机译:鲁棒品种中文化学习利用M估算的变体

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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:我们提出了一种稳健的替代方案,众所周知的众所周知的字典学习技术K-SVD。具体而言,我们利用M估算器后面的理论将鲁棒性纳入K-SVD的稀疏编码阶段,因此,减少在存在异常值时可能引入的估计偏差。将五种不同的M估算器与其最佳的超级分数一起引入,以避免用户参数调整。以这种方式,所提出的框架具有与K-SVD相同的自由参数,其中包含鲁棒性的附加功能和在非高斯环境中的性能提高。我们通过在两种类型的非均匀噪声和胡椒噪声下恢复为合成数据和图像去噪以及脉冲噪声以及脉冲噪声来彻底展示所提出的算法的优越性。

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