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Just Noticeable Difference Estimation for Screen Content Images

机译:屏幕内容图像的明显差异估计

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摘要

We propose a novel just noticeable difference (JND) model for a screen content image (SCI). The distinct properties of the SCI result in different behaviors of the human visual system when viewing the textual content, which motivate us to employ a local parametric edge model with an adaptive representation of the edge profile in JND modeling. In particular, we decompose each edge profile into its luminance, contrast, and structure, and then evaluate the visibility threshold in different ways. The edge luminance adaptation, contrast masking, and structural distortion sensitivity are studied in subjective experiments, and the final JND model is established based on the edge profile reconstruction with tolerable variations. Extensive experiments are conducted to verify the proposed JND model, which confirm that it is accurate in predicting the JND profile, and outperforms the state-of-the-art schemes in terms of the distortion masking ability. Furthermore, we explore the applicability of the proposed JND model in the scenario of perceptually lossless SCI compression, and experimental results show that the proposed scheme can outperform the conventional JND guided compression schemes by providing better visual quality at the same coding bits.
机译:我们为屏幕内容图像(SCI)提出了一种新颖的,仅需注意的差异(JND)模型。当查看文本内容时,SCI的不同属性会导致人类视觉系统的不同行为,这促使我们在JND建模中采用局部参数化边缘模型并自适应地表示边缘轮廓。特别是,我们将每个边缘轮廓分解为其亮度,对比度和结构,然后以不同方式评估可见性阈值。在主观实验中研究了边缘亮度适应性,对比度掩蔽和结构失真敏感性,并基于具有可容忍变化的边缘轮廓重建建立了最终的JND模型。进行了广泛的实验以验证所提出的JND模型,该模型证实了它在预测JND轮廓方面是准确的,并且在失真掩盖能力方面优于最新的方案。此外,我们在感知无损SCI压缩的情况下探索了所提出的JND模型的适用性,并且实验结果表明,通过在相同的编码位上提供更好的视觉质量,所提出的方案可以优于传统的JND指导的压缩方案。

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