No-reference image quality assessment using fusion metric

被引:0
作者
Jayashri V. Bagade
Kulbir Singh
Y. H. Dandawate
机构
[1] Vishwakarma Institute of Information Technology,Department of Information Technology
[2] Thapar Institute of Engineering and Technology,Department of Electronics and Communication Engineering
[3] Vishwakarma Institute of Information Technology,Department of Electronics and Telecommunication
来源
Multimedia Tools and Applications | 2020年 / 79卷
关键词
Image quality assessment; No-reference image quality assessment; Scale invariant feature transform (SIFT); Curvelet; Neurofuzzy classifier;
D O I
暂无
中图分类号
学科分类号
摘要
This paper presents a fusion featured metric for no-reference image quality assessment of natural images. Natural images exhibit strong statistical properties across the visual contents such as leading edge, high dimensional singularity, scale invariance, etc. The leading edge represents the strong presence of continuous points, whereas high singularity conveys about non-continuous points along the curves. Both edges and curves are equally important in perceiving the natural images. Distortions to the image affect the intensities of these points. The change in the intensities of these key points can be measured using SIFT. However, SIFT tends to ignore certain points such as the points in the low contrast region which can be identified by curvelet transform. Therefore, we propose a fusion of SIFT key points and the points identified by curvelet transform to model these changes. The proposed fused feature metric is computationally efficient and light on resources. The neruofuzzy classifier is employed to evaluate the proposed feature metric. Experimental results show a good correlation between subjective and objective scores for public datasets LIVE, TID2008, and TID2013.
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页码:2109 / 2125
页数:16
相关论文
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