An information theoretic image-quality measure

O. Elbadawy, M. El-Sakka, M. Kamel
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引用次数: 19

Abstract

Lossy image compression techniques aim at encoding images with a minimal representation. During this process, some visually useful information may be lost. Assessing the information loss in decompressed images is not an easy task. In this paper, a new quantitative image-quality measure is introduced. This new measure incorporates information theory into the most commonly used objective criterion (the mean square error). The new measure has been tested by experiments performed on a wide variety of images. The results show an increase in the correlation between subjective rating by human observers and the normalized mean square error after applying the new measure.
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一种信息理论的图像质量测量方法
有损图像压缩技术的目的是用最小的表示对图像进行编码。在这个过程中,一些视觉上有用的信息可能会丢失。评估解压缩图像中的信息损失并不是一件容易的事。本文介绍了一种新的定量图像质量测量方法。这种新方法将信息论纳入了最常用的客观标准(均方误差)。这项新措施已经在各种各样的图像上进行了实验。结果表明,应用新度量后,人类观察者的主观评价与归一化均方误差之间的相关性增加。
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