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A nonparametric-test-based structural similarity measure for digital images

机译:基于非参数测试的数字图像结构相似性度量

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摘要

In image processing, image similarity indices evaluate how much structural information is maintained by a processed image in relation to a reference image. Commonly used measures, such as the mean squared error (MSE) and peak signal to noise ratio (PSNR), ignore the spatial information (e.g. redundancy) contained in natural images, which can lead to an inconsistent similarity evaluation from the human visual perception. Recently, a structural similarity measure (SSIM), that quantifies image fidelity through estimation of local correlations scaled by local brightness and contrast comparisons, was introduced by Wang et al. (2004). This correlation-based SSIM outperforms MSE in the similarity assessment of natural images. However, as correlation only measures linear dependence, distortions from multiple sources or nonlinear image processing such as nonlinear filtering can cause SSIM to under- or overestimate the true structural similarity. In this article, we propose a new similarity measure that replaces the correlation and contrast comparisons of SSIM by a term obtained from a nonparametric test that has superior power to capture general dependence, including linear and nonlinear dependence in the conditional mean regression function as a special case. The new similarity measure applied to images from noise contamination, filtering, and watermarking, provides a more consistent image structural fidelity measure than commonly used measures.
机译:在图像处理中,图像相似性指标评估相对于参考图像,处理后的图像保留多少结构信息。诸如均方误差(MSE)和峰值信噪比(PSNR)之类的常用度量会忽略自然图像中包含的空间信息(例如冗余),这可能导致人类视觉感知的相似性评估不一致。最近,Wang等人提出了一种结构相似性度量(SSIM),该度量通过估计通过局部亮度和对比度比较缩放的局部相关性来量化图像保真度。 (2004)。这种基于相关性的SSIM在自然图像的相似性评估中胜过MSE。但是,由于相关仅测量线性相关性,因此来自多个源的失真或诸如非线性滤波之类的非线性图像处理可能导致SSIM低估或高估了真实的结构相似性。在本文中,我们提出了一种新的相似性度量,它用从非参数检验中获得的一个术语代替了SSIM的相关性和对比度比较,该术语具有较强的捕获一般依赖性的能力,其中包括条件均值回归函数中的线性和非线性依赖性案件。应用于来自噪声污染,滤波和水印的图像的新相似度度量提供了比常用度量更一致的图像结构保真度度量。

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