Abstract

In this paper, we present a locally adaptive regularized super-resolution model for images with mixed noise and outliers. The proposed method adaptively assigns the local norms in the data fidelity term of the regularized model. Specifically, it determines different norm values for different pixel locations, according to the impulse noise and motion outlier detection results. The L1 norm is employed for pixels with impulse noise and motion outliers, and the L2 norm is used for the other pixels. In order to balance the difference in the constraint strength between the L1 norm and the L2 norm, a strategy to adaptively estimate a weighted parameter is put forward. The experimental results confirm the superiority of the proposed method for different images with mixed noise and outliers.

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