论文标题
高斯贴片混合物模型和低等级贴片的图像denoing
Image Denoising by Gaussian Patch Mixture Model and Low Rank Patches
论文作者
论文摘要
基于非本地自相似度的低级算法是图像降级的最新方法。在本文中,通过解决两个问题提出了一种新方法:如何改善相似的贴片匹配精度并为高斯噪声构建适当的低级矩阵近似模型。对于第一期,可以在本地或全球找到类似的补丁。局部补丁匹配是在一个可以减轻噪声效果的大社区中找到类似的补丁,但是补丁的数量可能不足。全局补丁匹配是确定足够的类似补丁,但是补丁匹配的错误率可能更高。基于此,我们首先使用局部补丁匹配方法来减少噪声,然后使用高斯补丁混合模型来实现全局贴片匹配。第二个问题是没有低等级矩阵近似模型可以适应高斯噪声。我们根据高斯噪声的特征构建一个新模型,然后证明该模型有一个全球最佳解决方案。通过解决这两个问题,据报道,实验结果表明,所提出的方法的表现优于最先进的降级方法,包括PSNR / SSIM值和视觉质量的几个深度学习方法。
Non-local self-similarity based low rank algorithms are the state-of-the-art methods for image denoising. In this paper, a new method is proposed by solving two issues: how to improve similar patches matching accuracy and build an appropriate low rank matrix approximation model for Gaussian noise. For the first issue, similar patches can be found locally or globally. Local patch matching is to find similar patches in a large neighborhood which can alleviate noise effect, but the number of patches may be insufficient. Global patch matching is to determine enough similar patches but the error rate of patch matching may be higher. Based on this, we first use local patch matching method to reduce noise and then use Gaussian patch mixture model to achieve global patch matching. The second issue is that there is no low rank matrix approximation model to adapt to Gaussian noise. We build a new model according to the characteristics of Gaussian noise, then prove that there is a globally optimal solution of the model. By solving the two issues, experimental results are reported to show that the proposed approach outperforms the state-of-the-art denoising methods includes several deep learning ones in both PSNR / SSIM values and visual quality.