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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >TV+TV2Regularization with Nonconvex Sparseness-Inducing Penalty for Image Restoration
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TV+TV2Regularization with Nonconvex Sparseness-Inducing Penalty for Image Restoration

机译:电视+ TV2Regular化,具有非透露稀疏诱导图像恢复的惩罚

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In order to restore the high quality image, we propose a compound regularization method which combines a new higher-order extension of total variation (TV+TV2) and a nonconvex sparseness-inducing penalty. Considering the presence of varying directional features in images, we employ the shearlet transform to preserve the abundant geometrical information of the image. The nonconvex sparseness-inducing penalty approach increases robustness to noise and image nonsparsity. In what follows, we present the numerical solution of the proposed model by employing the split Bregman iteration and a novelp-shrinkage operator. And finally, we perform numerical experiments for image denoising, image deblurring, and image reconstructing from incomplete spectral samples. The experimental results demonstrate the efficiency of the proposed restoration method for preserving the structure details and the sharp edges of image.
机译:为了恢复高质量的形象,我们提出了一种复合正规化方法,该方法结合了全部变化(TV + TV2)的新高阶扩展和非凸起稀疏诱导罚球。 考虑到图像中的不同方向特征的存在,我们采用Shearlet变换来保留图像的丰富几何信息。 非渗透稀疏诱导惩罚方法增加了噪声和图像非策略的鲁棒性。 在下文中,我们通过采用分割Bregman迭代和新颖的收缩算子来提出所提出的模型的数值解决方案。 最后,我们对来自不完全光谱样品进行图像去噪,图像去孔和图像重建的数值实验。 实验结果表明,提出的恢复方法的效率,用于保留结构细节和图像的尖锐边缘。

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