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Improved hybrid blind IQA using alternative NSS characterization in the spatial domain

机译:在空间域中使用替代NSS表征改进的混合盲IQA

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The adoption of a Natural Scene Statistics (NSS) model has been an important research direction in the selection of perceptual features capable of giving satisfactory results in the problem of image quality assessment (IQA). In this work, trying to improve the performance of a blind IQA methodology, we simultaneously consider quality aware features from both the spatial and the transform domains. Moreover, for the first time, a statistical description of the spatial domain is investigated through the Student's t distribution, trying to predict the subjective evaluation of humans and to reduce the total number of features. In essence, a large number of features are used, which are optimized by the consequent characterization with the distribution's parameters. The proposed model is then fed to a tool to learn a simple regression model. In this way the extracted trained model is used to predict the graded image quality score, based on known publicly available datasets. The results are interesting and show high levels of agreement with the subjective human perception while maintaining a low total number of features.
机译:采用自然场景统计(NSS)模型在选择能够在图像质量评估问题(IQA)中提供了令人满意的令人满意的功能的重要研究方向。在这项工作中,尝试提高盲人IQA方法的性能,我们同时考虑来自空间和变换域的质量意识功能。此外,首次通过学生的T分布研究空间域的统计描述,试图预测人类的主观评估并降低特征总数。从本质上讲,使用了大量的特征,其通过随着分布的参数的结果进行了优化。然后将所提出的模型馈送到用于学习简单回归模型的工具。以这种方式,提取的训练模型用于基于已知的公知的数据集来预测渐变的图像质量分数。结果具有很有趣,并显示高度的达成级别,与主观人类感知同时保持低总数的特征。

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