Abstra'/> Local gradient patterns (LGP): An effective local-statistical-feature extraction scheme for no-reference image quality assessment
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Local gradient patterns (LGP): An effective local-statistical-feature extraction scheme for no-reference image quality assessment

机译:局部梯度模式(LGP):用于无参考图像质量评估的有效局部统计特征提取方案

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Abstract Gradient features are known to be effective for full-reference (FR) image quality assessment (IQA). However, only a few metrics utilize gradient features for no-reference (NR) IQA. To investigate the potential benefits of gradient magnitude and phase for NR-IQA, we propose a novel and effective local-statistical-feature extraction metric, namely Local Gradient Patterns (LGP), for general-purpose NR-IQA. Using a Gaussian partial derivative filter, the image is first decomposed into two complementary components: gradient magnitude and phase. The local statistical features (e.g., the conditional probability distributions) are then extracted from the complementary components, using the derived local gradient magnitude and phase pattern operators. Finally, to facilitate NR-IQA, local statistical features that convey important structural information are mapped to the subjective mean opinion score of the image, using a support vector regression (SVR) procedure. We evaluated our proposed LGP metric using images from two publicly available test databases; the results confirm that the proposed LGP metric provides predictive performance that is superior to most state-of-the-art NR-IQA metrics and has an acceptable level of computational complexity. ]]>
机译:<![cdata [ Abstract 梯度特征都是有效的,可用于全引用(FR)图像质量评估(IQA)。但是,只有几个指标利用了无引用(NR)IQA的梯度特征。为了研究NR-IQA的梯度幅度和阶段的潜在益处,我们提出了一种新颖局部统计学特征提取度量,即局部梯度模式(LGP),用于通用NR-IQA。使用高斯部分导数滤波器,图像首先分解成两个互补组件:梯度幅度和相位。然后,使用导出的局部梯度幅度和相位模式操作器从互补组件中提取局部统计特征(例如,条件概率分布)。最后,为了促进NR-IQA,使用支持向量回归(SVR)过程将重要结构信息传达到图像的主体平均意见分数的本地统计特征。我们使用来自两个公共可用测试数据库的图像评估了我们提出的LGP指标;结果证实,所提出的LGP度量标准提供了优于最先进的NR-IQA指标的预测性能,具有可接受的计算复杂程度。 ]]>

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