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Variable decomposition in total variant regularizer for denoising/deblurring image

机译:总变量常规器中的可变分解,用于去噪/去掩盖图像

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The aim of image restoration is to obtain a higher quality desired image from a degraded image. In this strategy, an image inpainting methods fill the degraded or lost area of the image by appropriate information. This is performed in such a way so that the resulted image is not distinguishable for a casual person who is not familiar with the original image. In this paper, the various images are degraded with different ways: 1) the blurring and adding noise in the original image, and 2) losing a percentage of the pixels of the original image. Then, the proposed method and other methods are performed to restore the desired image. It is required that the image restoration method use optimization methods. In this paper, a linear restoration method is used based on the total variation regularizer. The variable of optimization problem is decomposed, and the new optimization problem is solved by using Lagrangian augmented method. The experimental results show that the proposed method is faster, and the restored images have higher quality than other methods.
机译:图像恢复的目的是从降级的图像获得更高质量的期望图像。在该策略中,图像染色方法通过适当的信息填充图像的劣化或丢失区域。这以这样的方式执行,使得所产生的图像对于不熟悉原始图像的休闲人来说是不可分辨的。在本文中,各种图像以不同方式劣化:1)原始图像中的模糊和添加噪声,以及2)丢失原始图像的像素的百分比。然后,执行所提出的方法和其他方法以恢复所需图像。需要图像恢复方法使用优化方法。在本文中,基于总变化规范器使用了线性恢复方法。优化问题的变量分解,通过使用拉格朗日增强方法来解决新的优化问题。实验结果表明,该方法更快,恢复的图像具有比其他方法更高的质量。

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