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Image quality assessment based on noise classification

机译:基于噪声分类的图像质量评估

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摘要

Although the structural information-based image quality assessment SSIM (Structural Similarity) is simple and has been proved to be better than the PSNR (peak signal to noise ratio) method, there are still some difficulties in assessing various noise images. Considering the effect of the Gaussian and Salt& Pepper noise on image quality, this paper propose a two-step strategy for image quality assessment based on Noise Classification (NC-SSIM). The novel method firstly classifies noise types based on flat regions, then improve existing SSIM algorithm. We test the validation of the proposed algorithm on particular subsets of new TID2008 database, and the experiments show that the NC-SSIM model can assess the image quality more precisely than the SSIM method.
机译:尽管基于结构信息的图像质量评估SSIM(结构相似性)很简单,并且已被证明比PSNR(峰值信噪比)方法更好,但是在评估各种噪声图像时仍然存在一些困难。考虑到高斯噪声和椒盐噪声对图像质量的影响,本文提出了一种基于噪声分类(NC-SSIM)的图像质量评估的两步策略。该方法首先基于平坦区域对噪声类型进行分类,然后对现有的SSIM算法进行改进。我们在新的TID2008数据库的特定子集上测试了该算法的有效性,实验表明,与SSIM方法相比,NC-SSIM模型可以更准确地评估图像质量。

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