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PA VIF: A passive aggressive visual information fidelity for full reference image quality assessment

机译:PA VIF:用于完整参考图像质量评估的被动攻击性视觉信息保真度

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Measurement of visual quality is of significant importance to many image processing tasks. The target of image quality assessment (IQA) is to design effective computational models in order to automatically predict the quality of images in a perceptual consistent manner. We propose a full reference (FR) IQA metric based on information-theoretic IQA framework and passive aggressive learning algorithm. We model the image distortion process with a signal attenuation matrix and an additive noise matrix in wavelet domain. The ridge regression is employed to get the initial attenuation matrix. The passive aggressive algorithm is then utilized in order to learn the particular attenuation matrix of each image block. At last we measure the perceptual quality by quantifying the loss of visual information to the proposed distortion model through an information-theoretic IQA framework. Our proposed metric is learning-free because the learning algorithms are adopted just in order to learn the attenuation matrix of each image block, and no training data is needed in the proposed metric. Experimental results demonstrate that our proposed IQA metric is competitive with existing learning-free IQA metrics; moreover, crossdatabase validation shows that the proposed IQA metric has a satisfying generalization ability.
机译:视觉质量的测量对于许多图像处理任务具有重要意义。图像质量评估(IQA)的目标是设计有效的计算模型,以便以感知的一致方式自动预测图像的质量。我们提出了一种基于信息理论IQA框架和被动攻击学习算法的完整参考(FR)IQA度量。我们利用信号衰减矩阵和小波域中的添加噪声矩阵模拟图像失真处理。采用脊回归来获得初始衰减矩阵。然后利用被动攻击性算法以学习每个图像块的特定衰减矩阵。最后,我们通过通过信息理论IQA框架量化对所提出的失真模型的视觉信息丢失来测量感知质量。我们所提出的指标是无学习的,因为仅采用学习算法来学习每个图像块的衰减矩阵,并且在所提出的指标中不需要培训数据。实验结果表明,我们提出的IQA指标与现有的无学习IQA指标具有竞争力;此外,交叉证实表明,所提出的IQA度量具有满足的泛化能力。

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