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Compressed image deblurring

机译:压缩图像去模糊

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We propose an algorithm to recover the latent image from the blurred and compressed input. In recent years, although many image deblurring algorithms have been proposed, most of the previous methods do not consider the compression effect in blurry images. Actually, it is unavoidable in practice that most of the real-world images are compressed. This compression will introduce a typical kind of noise, blocking artifacts, which do not meet the Gaussian distribution assumed in most existing algorithms. Without properly handling this non-Gaussian noise, the recovered image will suffer severe artifacts. Inspired by the statistic property of compression error, we model the non-Gaussian noise as hyper-Laplacian distribution. Based on this model, an efficient nonblind image deblurring algorithm based on variable splitting technique is proposed to solve the resulting nonconvex minimization problem. Finally, we also address an effective blind image deblurring algorithm which can deal with the compressed and blurred images efficiently. Extensive experiments compared with state-of-the-art nonblind and blind deblurring methods demonstrate the effectiveness of the proposed method.
机译:我们提出了一种从模糊和压缩输入中恢复潜像的算法。近年来,尽管已经提出了许多图像去模糊算法,但是大多数先前的方法并未考虑模糊图像中的压缩效果。实际上,实际上大多数现实图像都是不可避免的。这种压缩将引入一种典型的噪声,阻塞伪像,这不符合大多数现有算法中假定的高斯分布。如果未正确处理此非高斯噪声,则恢复的图像将遭受严重的伪像。受压缩误差统计特性的启发,我们将非高斯噪声建模为超拉普拉斯分布。在此模型的基础上,提出了一种基于可变分割技术的高效非盲图像去模糊算法,以解决由此产生的非凸最小化问题。最后,我们还解决了一种有效的盲图像去模糊算法,该算法可以有效处理压缩和模糊图像。与最先进的非盲和盲去模糊方法相比,大量实验证明了该方法的有效性。

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