基于多基因遗传规划的全参考图像质量评估预测模型

Naima Merzougui, L. Djerou
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引用次数: 3

摘要

在过去的十年中,已经开发了许多用于评估图像视觉质量的客观质量度量。调整评估效率的一个简单方法是通过排列和组合这些度量标准。这种融合方法的目标是利用所使用的度量,并最大限度地减少其缺点的影响。在本文中,使用一种称为多基因遗传规划(MGGP)的进化算法的符号回归技术,应用于使用一组图像质量指标(IQM)的客观分数的组合来预测数据集中图像的主题分数。通过从图像数据集中学习,MGGP算法可以通过同时优化模型“拟合优度”和模型“复杂性”两个相互竞争的目标,从所使用的21个指标中确定适当的图像质量指标,这些指标的客观得分被用作符号回归模型的预测指标。根据k-fold交叉验证和交叉数据集策略,使用公共领域可用的6个大型图像数据库(LIVE、CSIQ、TID2008、TID2013、IVC和MDID)来学习和测试预测模型。将所提出的方法与最先进的客观图像质量评估方法进行了比较。比较结果表明,所提出的方法优于其他先进的最新发展的融合方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-gene Genetic Programming based Predictive Models for Full-reference Image Quality Assessment
Many objective quality metrics for assessing the visual quality of images have been developed during the last decade. A simple way to fine tune the efficiency of assessment is through permutation and combination of these metrics. The goal of this fusion approach is to take advantage of the metrics utilized and minimize the influence of their drawbacks. In this paper, a symbolic regression technique using an evolutionary algorithm known as multi-gene genetic programming (MGGP) is applied for predicting subject scores of images in datasets using a combination of objective scores of a set of image quality metrics (IQM). By learning from image datasets, the MGGP algorithm can determine appropriate image quality metrics, from 21 metrics utilized, whose objective scores employed as predictors in the symbolic regression model, by optimizing simultaneously two competing objectives of model ‘goodness of fit’ to data and model ‘complexity’. Six large image databases (namely LIVE, CSIQ, TID2008, TID2013, IVC and MDID) that are available in public domain are used for learning and testing the predictive models, according the k-fold-cross-validation and the cross dataset strategies. The proposed approach is compared against state-of-the-art objective image quality assessment approaches. Results of comparison reveal that the proposed approach outperforms other state-of-the-art recently developed fusion approaches.
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