No-reference image visual quality assessment using nonlinear regression

Martin D. Dimitrievski, Z. Ivanovski, T. Kartalov
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引用次数: 4

Abstract

In this paper, a novel no-reference image visual quality metric is proposed based on fusion of statistical and human visual system based metrics using ε-Support Vector Regression. Different order polynomial regression was also examined as an approximation that has lower computational complexity. Compared to existing image quality assessment metrics, the proposed fused metric is able to better quantify the image quality regardless of the type of degradation. We furthermore improve the image quality assessment by training a separate regression model for each degradation type. The latter degradation specific approach yields near perfect correlation with subjective scores, however, it relies on prior knowledge of the degradation process.
基于非线性回归的无参考图像视觉质量评价
基于ε-支持向量回归,提出了一种新的基于统计和人类视觉系统的无参考图像视觉质量度量方法。不同阶多项式回归也被检验为具有较低的计算复杂度的近似。与现有的图像质量评估指标相比,所提出的融合指标能够更好地量化图像质量,而不考虑退化的类型。我们进一步通过为每个退化类型训练单独的回归模型来改进图像质量评估。后一种特定的退化方法与主观得分产生接近完美的相关性,然而,它依赖于退化过程的先验知识。
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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