连续SSIM图像插值的收敛性

F. Marchetti, G. Santin
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引用次数: 0

摘要

评估两幅图像的相似性是一项复杂的任务,吸引了图像处理界的大量努力。广泛使用的结构相似性指数测量(SSIM)通过量化感知结构相似性来解决这个问题。在本文中,我们考虑了最近引入的连续SSIM (cSSIM),它允许人们分析分辨率越来越高的图像序列,并进一步扩展索引的定义,以包含在实践中使用的局部加权版本。对于局部版本和全局版本,我们都证明了连续索引包含经典SSIM作为特例,并且我们提供了cSSIM与L_2$范数测量的图像相似性之间的精确联系。利用这一联系,我们通过L_2误差的界导出了cSSIM的界,并证明了在某些情况下这两种误差度量是等价的。我们利用这些结果获得了几种具体图像插值方法相对于cSSIM的精确收敛率,并通过不同的数值实验进一步验证了这些发现。这个新建立的连接为深入了解SSIM的特性和局限性(包括局部加权窗口对索引性能的影响)铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Convergence Results in Image Interpolation With the Continuous SSIM
Assessing the similarity of two images is a complex task that attracts significant efforts in the image processing community. The widely used Structural Similarity Index Measure (SSIM) addresses this problem by quantifying a perceptual structural similarity. In this paper we consider a recently introduced continuous SSIM (cSSIM), which allows one to analyze sequences of images of increasingly fine resolutions, and further extend the definition of the index to encompass the locally weighted version that is used in practice. For both the local and the global versions, we prove that the continuous index includes the classical SSIM as a special case, and we provide a precise connection between image similarity measured by the cSSIM and by the $L_2$ norm. Using this connection, we derive bounds on the cSSIM by means of bounds on the $L_2$ error, and we even prove that the two error measures are equivalent in certain circumstances. We exploit these results to obtain precise rates of convergence with respect to the cSSIM for several concrete image interpolation methods, and we further validate these findings by different numerical experiments. This newly established connection paves the way to obtain novel insights into the features and limitations of the SSIM, including on the effect of the local weighted window on the index performances.
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