Free- Reference Image Quality Assessment Framework Using Metrics Fusion and Dimensionality Reduction

B. Sadou, A. Lahoulou, T. Bouden, Anderson R. Avila, T. Falk, Z. Akhtar
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Abstract

This paper focuses on no-reference image quality assessment(NR-IQA)metrics. In the literature, a wide range of algorithms are proposed to automatically estimate the perceived quality of visual data. However, most of them are not able to effectively quantify the various degradations and artifacts that the image may undergo. Thus, merging of diverse metrics operating in different information domains is hoped to yield better performances, which is the main theme of the proposed work. In particular, the metric proposed in this paper is based on three well-known NR-IQA objective metrics that depend on natural scene statistical attributes from three different domains to extract a vector of image features. Then, Singular Value Decomposition (SVD) based dominant eigenvectors method is used to select the most relevant image quality attributes. These latter are used as input to Relevance Vector Machine (RVM) to derive the overall quality index. Validation experiments are divided into two groups; in the first group, learning process (training and test phases) is applied on one single image quality database whereas in the second group of simulations, training and test phases are separated on two distinct datasets. Obtained results demonstrate that the proposed metric performs very well in terms of correlation, monotonicity and accuracy in both the two scenarios.
基于度量融合和降维的自由参考图像质量评估框架
本文主要研究无参考图像质量评价(NR-IQA)指标。在文献中,提出了各种算法来自动估计视觉数据的感知质量。然而,它们中的大多数都不能有效地量化图像可能经历的各种退化和伪影。因此,合并在不同信息域中运行的不同指标有望产生更好的性能,这是所提出工作的主题。特别地,本文提出的度量是基于三个著名的NR-IQA客观度量,它们依赖于来自三个不同领域的自然场景统计属性来提取图像特征向量。然后,采用基于奇异值分解(SVD)的优势特征向量方法选择最相关的图像质量属性;后者被用作相关向量机(RVM)的输入,以得出整体质量指数。验证实验分为两组;在第一组中,学习过程(训练和测试阶段)应用于单个图像质量数据库,而在第二组模拟中,训练和测试阶段在两个不同的数据集上分开。结果表明,在两种情况下,所提出的度量在相关性、单调性和准确性方面都有很好的表现。
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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