Fuzzy logic modeling for objective image quality assessment

Ghislain Takam Tchendjou, Rshdee Alhakim, E. Simeu
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引用次数: 4

Abstract

This paper presents a novel methodology of objective image quality assessment (IQA) based on Fuzzy Logic (FL) method. The main purpose is to automatically assess the quality of image in agreement with human visual perception. The used attributes (quality metrics) and evaluation criteria (human rating mean opinion score MOS) are extracted from image quality database TID2013. The fuzzy model design starts by selecting the most independent attributes, by applying Pearson's correlation approach and seeking the most correlated metrics with the corresponding MOS. Then, Adaptive Neuro-Fuzzy Inference System (ANFIS) is applied in order to construct an objective fuzzy model able to efficiently predict the image quality correlated with the subjective MOS. In this paper, different fuzzy models are produced by modifying certain ANFIS configurations. After that, we select the appropriate ANFIS model that provides high prediction accuracy and stability with taking into account its implementation complexity. The overall architecture of the selected FL model consists of four input metrics, two bell-shaped membership functions associated to each input metric, two fuzzy if-then rules, two linear combination equations and one output which gives the image adequate quality score. Finally the performance of the proposed fuzzy model is compared with other IQA models produced by different machine learning methods, the simulation results demonstrate that the fuzzy logic model has a high stable behavior with the best agreement with human visual perception.
客观图像质量评价的模糊逻辑建模
提出了一种基于模糊逻辑(FL)方法的客观图像质量评价方法。其主要目的是自动评估符合人类视觉感知的图像质量。使用的属性(质量指标)和评价标准(人类评分平均意见得分MOS)从图像质量数据库TID2013中提取。模糊模型设计从选择最独立的属性开始,通过应用Pearson的相关方法,寻找与相应MOS相关度最大的指标。然后,应用自适应神经模糊推理系统(ANFIS)构建客观模糊模型,能够有效预测与主观MOS相关的图像质量。本文通过修改某些ANFIS配置,得到了不同的模糊模型。在此基础上,考虑到模型的实现复杂性,选择了具有较高预测精度和稳定性的ANFIS模型。所选FL模型的总体结构由四个输入指标、两个与每个输入指标相关联的钟形隶属函数、两个模糊if-then规则、两个线性组合方程和一个给出图像足够质量分数的输出组成。最后将所提模糊模型的性能与不同机器学习方法产生的IQA模型进行了比较,仿真结果表明,所提模糊逻辑模型具有较高的稳定性,与人类视觉感知的一致性最好。
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