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Reduced-Reference Quality Assessment Based on the Entropy of DWT Coefficients of Locally Weighted Gradient Magnitudes

机译:基于局部加权梯度幅度的DWT系数熵的降参考质量评估

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Perceptual image quality assessment (IQA) attempts to use computational models to estimate the image quality in accordance with subjective evaluations. Reduced-reference IQA (RRIQA) methods make use of partial information or features extracted from the reference image for estimating the quality of distorted images. Finding a balance between the number of RR features and accuracy of the estimated image quality is essential and important in IQA. In this paper, we propose a training-free low-cost RRIQA method that requires a very small number of RR features (six RR features). The proposed RRIQA algorithm is based on the discrete wavelet transform (DWT) of locally weighted gradient magnitudes. We apply human visual system’s contrast sensitivity and neighborhood gradient information to weight the gradient magnitudes in a locally adaptive manner. The RR features are computed by measuring the entropy of each DWT subband, for each scale, and pooling the subband entropies along all orientations, resulting in L RR features (one average entropy per scale) for an L -level DWT. Extensive experiments performed on seven large-scale benchmark databases demonstrate that the proposed RRIQA method delivers highly competitive performance as compared with the state-of-the-art RRIQA models as well as full reference ones for both natural and texture images. The MATLAB source code of REDLOG and the evaluation results are publicly available online at https://http://lab.engineering.asu.edu/ivulab/software/redlog/.
机译:感知图像质量评估(IQA)尝试根据主观评估使用计算模型来估计图像质量。缩减参考IQA(RRIQA)方法利用从参考图像中提取的部分信息或特征来估计失真图像的质量。在IQA中,找到RR功能的数量和估计图像质量的准确性之间的平衡至关重要。在本文中,我们提出了一种无需培训的低成本RRIQA方法,该方法需要非常少的RR功能(六个RR功能)。所提出的RRIQA算法基于局部加权梯度幅度的离散小波变换(DWT)。我们应用人类视觉系统的对比度敏感度和邻域梯度信息,以局部自适应的方式加权梯度大小。通过测量每个尺度的每个DWT子带的熵,并沿所有方向合并子带熵来计算RR特征,从而得到L级DWT的L RR特征(每个尺度一个平均熵)。在七个大型基准数据库上进行的大量实验表明,与最新的RRIQA模型以及自然和纹理图像的完整参考模型相比,所提出的RRIQA方法具有极高的竞争力。 REDLOG的MATLAB源代码及其评估结果可从https:// http://lab.engineering.asu.edu/ivulab/software/redlog/在线获得。

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