具有图像块可预测性的结构相似性指数

Mykola Ponomarenko, K. Egiazarian, V. Lukin, V. Abramova
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引用次数: 19

摘要

结构相似指数(SSIM)是一种广泛应用于评价图像和遥感数据视觉质量的全参考度量。它以分块方式计算,并基于三个组成部分的乘法:图像块均值的相似性,对比度的相似性和相关因子。本文对SSIM进行了两种修改。首先,将第四个乘法分量引入SSIM(从而获得SSIM4),它描述了图像块的可预测性的相似性。给定块的可预测性计算为所考虑的块与相邻块之间的均方误差的最小值。其次,提出了一种计算彩色图像SSIM和SSIM4指标的简单方案,并对其进行了优化。在TID2013、LIVE和FLT等专业图像数据库中验证了所提改进的有效性。特别是,最近引入的FLT数据库的Spearman秩顺序相关系数(SROCC),在提议的度量颜色SSIM4和平均意见分数(MOS)之间计算,已经达到了0.85(所有比较指标的最佳结果),而SSIM等于0.58。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Structural Similarity Index with Predictability of Image Blocks
Structural similarity index (SSIM) is a widely used full-reference metric for assessment of visual quality of images and remote sensing data. It is calculated in a block-wise manner and is based on multiplication of three components: similarity of means of image blocks, similarity of contrasts and a correlation factor. In this paper, two modifications of SSIM are proposed. First, a fourth multiplicative component is introduced to SSIM (thus obtaining SSIM4) that describes a similarity of predictability of image blocks. A predictability for a given block is calculated as a minimal value of mean square error between the considered block and the neighboring blocks. Second, a simple scheme for calculating the metrics SSIM and SSIM4 for color images is proposed and optimized. Effectiveness of the proposed modifications is confirmed for the specialized image databases TID2013, LIVE, and FLT. In particular, the Spearman rank order correlation coefficient (SROCC) for the recently introduced FLT Database, calculated between the proposed metric color SSIM4 and mean opinion scores (MOS), has reached the value 0.85 (the best result for all compared metrics) whilst for SSIM it is equal to 0.58.
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