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IMAGE ENTROPY OF PRIMITIVE AND VISUAL QUALITY ASSESSMENT

机译:原始和视觉质量评估的图像熵

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Recently, the concept of Entropy of Primitive (EoP) has been proposed to measure the image visual information. Some successful EoP based application also be developed. In this paper, we further explore the concept of EoP and propose an improved version: the L1 norm based EoP. Our EoP takes full account of the properties of a dictionary's layered structure and the characteristic of a basis pursuit method. Experimental results show that the L1 norm based EoP is superior to the L0 norm based one in measuring the image visual information. The curve of L1 norm based EoP holds a more consistent monotonicity with SSIM, its values is not trapped in the local convergence and the convergence value is less than that of the L0 norm based one. With the convergence characteristics of EoP, we further explore its application in stereoscopic image quality assessment (SIQA). With EoP as monocular cue and mutual information of primitive (MIP) as binocular cue, the relative entropy between the original stereoscopic image and the distorted one is used to compute the quality score by a prediction function which is trained using support vector regression (SVR). Extensive experimental results show that our new EoP based SIQA outperforms many state-of-the-art on the LIVE phase II databases.
机译:最近,已经提出了原始(EOP)熵的概念来测量图像视觉信息。还开发了一些基于EOP的应用程序。在本文中,我们进一步探索了EOP的概念,并提出了一种改进的版本:L1标准的EOP。我们的EOP充分考虑了字典的分层结构的属性和基础追踪方法的特征。实验结果表明,基于L1标准的EOP优于L0标准,基于测量图像视觉信息。 L1 Norm基EOP的曲线占据了SSIM的更一致的单调性,其值未被捕获在局部收敛中,并且收敛值小于L0基于范围的值。随着EOP的收敛特征,我们进一步探讨了其在立体图像质量评估(SIQA)中的应用。随着EOP作为原始(MIP)作为双目提示的单眼提示和互信息,原始立体图像和失真之间的相对熵用于通过使用支持向量回归(SVR)训练的预测函数来计算质量得分。广泛的实验结果表明,我们基于新的EOP基于Live II阶段数据库的最多态度。

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