The full reference quality assessment metrics for super resolution of an image: Shedding light or casting shadows?

T. Ahmad, Shahryar Shafique Quershi
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引用次数: 7

Abstract

There is a driving need for digital images of high resolution and quality in different Multimedia applications. However, a high resolution digital camera is still very expensive in the market. To meet such demand of today, the super resolution techniques promises to provide a high resolution image for multiple low resolution input images. But to judge the performance of existing super resolution algorithms objectively is a difficult task because lack of sufficient realiable testing tools. In this paper, it is shown that the existing Full Reference (FR) metrics cast shadows on the overall quality of super resolved image so judging super resolution quality using them is not an good idea. The main reasons for that is they do not take the visual masking phenomenon into consideration and also, they depends on the reference input, which itself may be of low quality. Experimental results shows that there is a need for a new Full Reference metric that shed light on the quality of reconstructed image in order to compare the performance of different existing super resolution (SR) methods.
图像超分辨率的完整参考质量评估指标:散光还是投射阴影?
在不同的多媒体应用中,对高分辨率和高质量的数字图像有着迫切的需求。然而,高分辨率数码相机在市场上仍然非常昂贵。为了满足当今的这种需求,超分辨率技术有望为多个低分辨率输入图像提供高分辨率图像。但由于缺乏足够可靠的测试工具,客观地判断现有超分辨率算法的性能是一项艰巨的任务。本文表明,现有的全参考(FR)指标会对超分辨图像的整体质量产生影响,因此使用它们来判断超分辨图像的质量并不是一个好主意。其主要原因是它们没有考虑到视觉掩蔽现象,而且它们依赖于参考输入,而参考输入本身可能质量较低。实验结果表明,为了比较不同的超分辨率(SR)方法的性能,需要一种新的全参考度量(Full Reference metric)来反映重建图像的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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