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Real distorted images quality assessment based on multi-layer visual perception mechanism and high-level semantics

机译:基于多层视觉感知机制和高级语义的真实扭曲的图像质量评估

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摘要

Most of the existing image quality assessment (IQA) methods are directed to artificially synthesized distorted images, in which the types and characteristics of distortion are different from those in the real world. In view of the fact that the existing non-reference IQA methods can not accurately evaluate the quality of the real distortion image, combined with the theoretical analysis of multi-layer visual perception mechanism, we propose a real image distortion IQA method based on image underlying features and high-level semantics. Considering non-linear hierarchical structure of human visual perception, firstly, k-means clustering algorithm is performed according to the underlying feature indexs of the image so that the used image database can be divided into several groups, which aims to improve the accuracy of predicted quality score. Secondly, the deep convolutional neural network (DCNN) is used to extract the first-grade high-level semantic features in each group. Then, second-grade high-level semantic features that can provide better representation of image features are obtained by performing multiple statistical functions on first-grade high-level semantics. Besides, we establish an effective high-capacity regressor with high-level semantics and subjective mean opinion scores (MOS) values of the human eyes. The experimental results show that the proposed model on the KonIQ-10 k image database can predict the quality score effectively and achieve a high consistency with the corresponding MOS value, which is helpful for the subsequent image enhancement.
机译:大多数现有的图像质量评估(IQA)方法被引导到人工合成的扭曲图像,其中失真的类型和特征与现实世界中的类型不同。鉴于现有的非参考IQA方法不能准确地评估真实失真图像的质量,结合多层视觉感知机制的理论分析,我们提出了一种基于图像底层的真实图像失真IQA方法功能和高级语义。考虑到人类视觉感知的非线性分层结构,首先,根据图像的基础特征索引执行K-Means聚类算法,以便将使用的图像数据库分为几个组,旨在提高预测的准确性质量分数。其次,深度卷积神经网络(DCNN)用于提取每个组中的一级高级语义特征。然后,通过在一级高级语义上执行多个统计功能,可以提供更好地表示图像特征的二级高电平语义特征。此外,我们建立了具有高级别语义和主观平均意见评分(MOS)值的有效高容量的回归体。实验结果表明,KONIQ-10K图像数据库上提出的模型可以有效地预测质量得分,并实现了与相应的MOS值的高一致性,这有助于随后的图像增强。

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