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Assessment of random-noise contamination in digital images via testing on wavelet coefficients

机译:通过小波系数测试评估数字图像中的随机噪声污染

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Full-reference image quality assessment methods seek to measure visual similarity between two images (in practice, one original and the other its altered version). It has been established that traditional methods, such as Mean Square Error and Peak Signal-to-Noise Ratio poorly mimic the human visual system and much of the recent research in image quality assessment has been directed toward developing image similarity measures that are more consistent with assessments from human observers. Some extensively tested popular methods in this regard are Visual Image Fidelity (VIF), Structure Similarity Index (SSIM) and its variants Multi-scale Structure Similarity Index (MS-SSIM) and Information Content Weighted Multi-scale Structure Similarity Index (IW-SSIM). However, experiments show that these methods may produce drastically different similarity indices for different images contaminated with the same source of random noise. In this article, we propose a new full-reference image quality assessment method, namely, Wavelet-based Non-parametric Structure Similarity Index (WNPSSIM), specifically designed to detect visual similarity between images contaminated with all sorts of random noises. WNPSSIM is based on a rank test of the hypothesis of identical images conducted on the wavelet domain. Our experimental comparisons demonstrate that WNPSSIM provides similar ranking as MS-SSIM, IW-SSIM and VIF for images contaminated with different random noises in general though the methodology is very different. In addition, WNPSSIM corrects the aforementioned shortcoming of assigning sharply different similarity indices for different images contaminated with the same source of random noise.
机译:全参考图像质量评估方法试图测量两幅图像之间的视觉相似度(实际上是一张原始图像,另一张是其更改版本)。已经确定,诸如均方误差和峰值信噪比之类的传统方法不能很好地模仿人类的视觉系统,并且图像质量评估中的许多最新研究已针对开发与图像质量更一致的图像相似性度量。来自人类观察者的评估。在这方面,一些经过广泛测试的流行方法是视觉图像保真度(VIF),结构相似性指数(SSIM)及其变体多尺度结构相似性指数(MS-SSIM)和信息内容加权多尺度结构相似性指数(IW-SSIM) )。但是,实验表明,这些方法对于受相同随机噪声源污染的不同图像可能会产生完全不同的相似性指标。在本文中,我们提出了一种新的全参考图像质量评估方法,即基于小波的非参数结构相似性指数(WNPSSIM),该方法专门设计用于检测受各种随机噪声污染的图像之间的视觉相似性。 WNPSSIM基于在小波域上进行的相同图像假设的秩检验。我们的实验比较表明,尽管方法大相径庭,但对于受不同随机噪声污染的图像,WNPSSIM的排名与MS-SSIM,IW-SSIM和VIF相似。此外,WNPSSIM纠正了上述缺点,即为受相同随机噪声源污染的不同图像分配明显不同的相似性指标。

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