Laparra Valero, Muñoz-Marí Jordi, Malo Jesús
Image Processing Laboratory, Universitat de València, Catedrático A. Escardino, 46980 Paterna, València, Spain.
J Opt Soc Am A Opt Image Sci Vis. 2010 Apr 1;27(4):852-64. doi: 10.1364/JOSAA.27.000852.
Structural similarity metrics and information-theory-based metrics have been proposed as completely different alternatives to the traditional metrics based on error visibility and human vision models. Three basic criticisms were raised against the traditional error visibility approach: (1) it is based on near-threshold performance, (2) its geometric meaning may be limited, and (3) stationary pooling strategies may not be statistically justified. These criticisms and the good performance of structural and information-theory-based metrics have popularized the idea of their superiority over the error visibility approach. In this work we experimentally or analytically show that the above criticisms do not apply to error visibility metrics that use a general enough divisive normalization masking model. Therefore, the traditional divisive normalization metric 1 is not intrinsically inferior to the newer approaches. In fact, experiments on a number of databases including a wide range of distortions show that divisive normalization is fairly competitive with the newer approaches, robust, and easy to interpret in linear terms. These results suggest that, despite the criticisms of the traditional error visibility approach, divisive normalization masking models should be considered in the image quality discussion.
结构相似性度量和基于信息论的度量已被提出,作为基于误差可见性和人类视觉模型的传统度量的完全不同的替代方案。针对传统的误差可见性方法提出了三点基本批评:(1)它基于接近阈值的性能,(2)其几何意义可能有限,(3)固定池化策略在统计上可能不合理。这些批评以及基于结构和信息论的度量的良好性能,使它们比误差可见性方法更具优越性的观点得到了广泛认可。在这项工作中,我们通过实验或分析表明,上述批评不适用于使用足够通用的除法归一化掩蔽模型的误差可见性度量。因此,传统的除法归一化度量1本质上并不逊于更新的方法。事实上,在包括各种失真的多个数据库上进行的实验表明,除法归一化与更新的方法相当有竞争力,稳健且易于在线性方面进行解释。这些结果表明,尽管对传统的误差可见性方法存在批评,但在图像质量讨论中应考虑除法归一化掩蔽模型。