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An Efficient Image Reconstruction Framework Using Total Variation Regularization with Lp-Quasinorm and Group Gradient Sparsity

机译:一种有效的图像重建框架,使用Lp-Quasinorm和组梯度稀疏度进行总变化正则化

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The total variation (TV) regularization-based methods are proven to be effective in removing random noise. However, these solutions usually have staircase effects. This paper proposes a new image reconstruction method based on TV regularization with Lp-quasinorm and group gradient sparsity. In this method, the regularization term of the group gradient sparsity can retrieve the neighborhood information of an image gradient, and the Lp-quasinorm constraint can characterize the sparsity of the image gradient. The method can effectively deblur images and remove impulse noise to well preserve image edge information and reduce the staircase effect. To improve the image recovery efficiency, a Fast Fourier Transform (FFT) is introduced to effectively avoid large matrix multiplication operations. Moreover, by introducing accelerated alternating direction method of multipliers (ADMM) in the method to allow for a fast restart of the optimization process, this method can run faster. In numerical experiments on standard test images sourced form Emory University and CVG-UGR (Computer Vision Group, University of Granada) image database, the advantage of the new method is verified by comparing it with existing advanced TV-based methods in terms of peak signal-to-noise ratio (PSNR), structural similarity (SSIM), and operational time.
机译:事实证明,基于总变化(TV)正则化的方法可以有效去除随机噪声。但是,这些解决方案通常具有阶梯效应。提出了一种基于电视正则化的Lp-拟三角函数和群梯度稀疏性的图像重建新方法。在这种方法中,组梯度稀疏性的正则化项可以检索图像梯度的邻域信息,而Lp-准线性约束可以表征图像梯度的稀疏性。该方法可以有效地对图像进行去模糊并去除脉冲噪声,以很好地保留图像边缘信息并减少阶梯效应。为了提高图像恢复效率,引入了快速傅立叶变换(FFT)以有效避免大型矩阵乘法运算。此外,通过在该方法中引入乘法器的加速交替方向方法(ADMM)以允许优化过程快速重启,该方法可以运行得更快。在来自Emory大学和CVG-UGR(格拉纳达大学计算机视觉小组)图像数据库的标准测试图像的数值实验中,通过将其与峰值信号方面的现有先进的基于电视的方法进行比较,证实了该新方法的优势。噪声比(PSNR),结构相似度(SSIM)和运行时间。

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