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Nonconvex Second-Order Variational Image Denoising Model with Adaptive Selection of Regularization Parameters

机译:具有自适应选择正则化参数的非凸起二阶变分图像去噪模型

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Image denoising is a typically ill-conditioned inverse problem, which has attracted much attention in the fields of image processing and computer vision. In order to overcome the ill-conditioned nature of this inverse problem, a nonconvex total generalized variation (NTGV)-regularized variational model was proposed in this paper for edge-preserving image denoising. The introduced NTGV regularizer is capable of restoring the degraded images while preserving the fine image details. To further improve the image quality, a local variance-based estimation method was introduced to automatically compute the spatially variant regularization parameters, which can make a good balance between noise suppression and detail preservation. A numerical optimization algorithm based on Alternating Direction Method of Multipliers was proposed to effectively solve the resulting image restoration model. The numerical experiments have been conducted to compare the proposed model with current state-of-the-art image denoising methods. The experimental results have illustrated the good performance of the proposed method.
机译:图像去噪是一个通常不良的逆问题,它在图像处理和计算机视野领域引起了很多关注。为了克服该逆问题的不良性质,本文提出了非凸显全广义变化(NTGV) - 重构变分模型,用于预先保留图像去噪。介绍的NTGV规范器能够在保留细图像细节时恢复降级的图像。为了进一步提高图像质量,引入了局部方差的估计方法以自动计算空间变体正则化参数,这可以在噪声抑制和细节保存之间进行良好的平衡。提出了一种基于乘法器交替方向方法的数值优化算法,以有效解决得到的图像恢复模型。已经进行了数值实验以将提出的模型与当前的最先进的图像去噪方法进行比较。实验结果表明了该方法的良好性能。

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