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Gaussian mixture model learning based image denoising method with adaptive regularization parameters
Authors:Jianwei Zhang  Jing Liu  Tong Li  Yuhui Zheng  Jin Wang
Affiliation:1.College of Math and Statistic,Nanjing University of Information Science and Technology,Nanjing,China;2.School of Engineering Science,University of Chinese Academy of Sciences,Beijing,China;3.School of Computer and Software,Nanjing University of Information Science and Technology,Nanjing,China;4.College of Information Engineering,Yangzhou University,Yangzhou,China
Abstract:Gaussian mixture model learning based image denoising as a kind of structured sparse representation method has received much attention in recent years. In this paper, for further enhancing the denoised performance, we attempt to incorporate the gradient fidelity term with the Gaussian mixture model learning based image denoising method to preserve more fine structures of images. Moreover, we construct an adaptive regularization parameter selection scheme by combing the image gradient with the local entropy of the image. Experiment results show that our proposed method performs an improvement both in visual effects and peak signal to noise values.
Keywords:
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