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No reference image quality assessment based on statistical distribution of local Sub-Image-Similarity

机译:没有基于局部子图像相似度的统计分布的参考图像质量评估

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The research on no reference image quality assessment (NR IQA) is the most attractive one in the area of image quality perception. In this paper, we propose to use the statistical distribution of local Sub-Image-Similarity (SIS) measures for NR IQA model design. Here the mean and the difference properties among the local SIS measurements in different directions are synthesized into five quality labels to depict the perceptual quality property of deteriorated images. The proposed NR IQA model is developed based on the statistical distribution of quality labels over whole image, via a SVM regression. Experiments show that the proposed model performs best according to the predictive accuracy when compared to the published NR IQA models, and works stably with different parameter selections and cross database evaluations.
机译:在图像质量感知领域,无参考图像质量评估(NR IQA)的研究是最有吸引力的。在本文中,我们建议使用局部亚像相似度(SIS)度量的统计分布进行NR IQA模型设计。这里,在不同方向上的局部SIS测量之间的均值和差异属性被合成为五个质量标签,以描述劣化图像的感知质量属性。基于质量标签在整个图像上的统计分布,通过SVM回归开发了建议的NR IQA模型。实验表明,与已发布的NR IQA模型相比,该模型在预测准确度方面表现最佳,并且可以在不同的参数选择和跨数据库评估中稳定运行。

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