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Reduced-Reference Image Quality Assessment Based on Improved Local Binary Pattern

机译:基于改进局部二值模式的降参考图像质量评估

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The structure of image consists of two aspects: intensity of structure and distribution of structure. Image distortions that degrade image quality potentially affect both the intensity and distribution of image structure. Yet most structure-based image quality assessment methods focus only on the change of the intensity of structure. In this paper, we propose an improved structure-based image quality assessment method that takes both into account. First, we employ image gradients magnitude to describe the intensity of structure and attempt to explore the distribution of structure with local binary pattern (LBP) and newly designed center-surrounding pixels pattern (CSPP, complementary pattern for LBP). LBP and CSPP features are mapped into a combined histogram weighted by the intensity of structure to represent the image structure. Finally, the change of structure which can gauge image quality is measured by calculating the similarity of the histograms of the reference and distorted images. Support vector regression (SVR) is employed to pool structure features to predict an image quality score. Experimental results on three benchmark databases demonstrate that the proposed structure pattern can effectively represent the intensity and distribution of the structure of the image. The proposed method achieves high consistency with subjective perception with 17 reference values, performing better than the existing methods.
机译:图像的结构包括两个方面:结构的强度和结构的分布。降低图像质量的图像失真可能会影响图像结构的强度和分布。然而,大多数基于结构的图像质量评估方法仅关注结构强度的变化。在本文中,我们提出了一种兼顾了两者的改进的基于结构的图像质量评估方法。首先,我们使用图像梯度幅度来描述结构的强度,并尝试探索具有局部二进制模式(LBP)和新设计的中心环绕像素模式(CSPP,LBP的互补模式)的结构的分布。将LBP和CSPP特征映射到组合的直方图中,该直方图由结构强度加权以表示图像结构。最后,通过计算参考图像和失真图像直方图的相似度来测量可以衡量图像质量的结构变化。支持向量回归(SVR)用于合并结构特征以预测图像质量得分。在三个基准数据库上的实验结果表明,所提出的结构模式可以有效地表示图像结构的强度和分布。所提出的方法在主观感知上具有17个参考值,与现有方法相比,具有较高的一致性。

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