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Perceptual Quality Metric With Internal Generative Mechanism

机译:具有内部生成机制的感知质量度量

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Objective image quality assessment (IQA) aims to evaluate image quality consistently with human perception. Most of the existing perceptual IQA metrics cannot accurately represent the degradations from different types of distortion, e.g., existing structural similarity metrics perform well on content-dependent distortions while not as well as peak signal-to-noise ratio (PSNR) on content-independent distortions. In this paper, we integrate the merits of the existing IQA metrics with the guide of the recently revealed internal generative mechanism (IGM). The IGM indicates that the human visual system actively predicts sensory information and tries to avoid residual uncertainty for image perception and understanding. Inspired by the IGM theory, we adopt an autoregressive prediction algorithm to decompose an input scene into two portions, the predicted portion with the predicted visual content and the disorderly portion with the residual content. Distortions on the predicted portion degrade the primary visual information, and structural similarity procedures are employed to measure its degradation; distortions on the disorderly portion mainly change the uncertain information and the PNSR is employed for it. Finally, according to the noise energy deployment on the two portions, we combine the two evaluation results to acquire the overall quality score. Experimental results on six publicly available databases demonstrate that the proposed metric is comparable with the state-of-the-art quality metrics.
机译:客观图像质量评估(IQA)旨在评估与人类感知一致的图像质量。大多数现有的感知IQA指标无法准确表示不同类型的失真造成的劣化,例如,现有的结构相似性指标在与内容有关的失真上表现良好,而与与内容无关的峰值信噪比(PSNR)一样差扭曲。在本文中,我们将现有IQA指标的优点与最近揭示的内部生成机制(IGM)结合起来。 IGM表明,人类视觉系统会主动预测感觉信息,并努力避免图像感知和理解的残留不确定性。受IGM理论启发,我们采用自回归预测算法将输入场景分解为两部分,具有视觉内容预测部分的预测部分和具有剩余视觉内容部分的无序部分。预测部分的失真会降低主要视觉信息的质量,并采用结构相似性过程来衡量其退化;无序部分的失真主要改变了不确定信息,并采用了PNSR。最后,根据这两个部分的噪声能量部署,我们将两个评估结果结合起来以获得总体质量得分。在六个可公开获得的数据库上的实验结果表明,所提出的指标可与最新的质量指标相媲美。

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