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Student's-t Mixture Model Based Image Denoising Method with Gradient Fidelity Term

机译:基于学生t混合模型的梯度保真项图像去噪方法

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摘要

The mixture models based structured sparse representation (MM-SSR) method has received much attention in recent years. Especially, the student's-t mixture model based structured sparse representation (SMM-SSR) has been widely used due to the fact that it has a heavy tail and is robust to noise. In this paper, for further enhancing the performance of SMM-SSR, we attempt to incorporate the gradient fidelity term with the student's-t mixture model for image denoising. Experiment results show that our proposed method outperforms the traditional SMM-SSR method.
机译:近年来,基于混合模型的结构化稀疏表示(MM-SSR)方法备受关注。特别地,基于学生的-t混合模型的结构化稀疏表示(SMM-SSR)由于其尾巴较重且对噪声具有鲁棒性,因此已被广泛使用。在本文中,为了进一步增强SMM-SSR的性能,我们尝试将梯度保真项与Student-t混合模型结合起来进行图像去噪。实验结果表明,本文提出的方法优于传统的SMM-SSR方法。

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