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Blind Image Quality Assessment via Deep Learning

机译:通过深度学习进行盲图像质量评估

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This paper investigates how to blindly evaluate the visual quality of an image by learning rules from linguistic descriptions. Extensive psychological evidence shows that humans prefer to conduct evaluations qualitatively rather than numerically. The qualitative evaluations are then converted into the numerical scores to fairly benchmark objective image quality assessment (IQA) metrics. Recently, lots of learning-based IQA models are proposed by analyzing the mapping from the images to numerical ratings. However, the learnt mapping can hardly be accurate enough because some information has been lost in such an irreversible conversion from the linguistic descriptions to numerical scores. In this paper, we propose a blind IQA model, which learns qualitative evaluations directly and outputs numerical scores for general utilization and fair comparison. Images are represented by natural scene statistics features. A discriminative deep model is trained to classify the features into five grades, corresponding to five explicit mental concepts, i.e., excellent, good, fair, poor, and bad. A newly designed quality pooling is then applied to convert the qualitative labels into scores. The classification framework is not only much more natural than the regression-based models, but also robust to the small sample size problem. Thorough experiments are conducted on popular databases to verify the model’s effectiveness, efficiency, and robustness.
机译:本文研究如何通过从语言描述中学习规则来盲目评估图像的视觉质量。大量的心理证据表明,人类更喜欢定性评估,而不是数字评估。然后将定性评估转换为数值分数,以相当基准的客观图像质量评估(IQA)指标。最近,通过分析从图像到数值等级的映射,提出了许多基于学习的IQA模型。但是,由于从语言描述到数字分数的这种不可逆转的转换中丢失了一些信息,因此学习到的映射几乎不够准确。在本文中,我们提出了一个盲人IQA模型,该模型直接学习定性评估,并输出数值分数以用于一般用途和公平比较。图像由自然场景统计功能表示。训练有区别的深度模型以将特征分为五个等级,对应于五个显式的心理概念,即优秀,良好,公平,不良和不良。然后应用新设计的质量池将定性标签转换为分数。分类框架不仅比基于回归的模型自然得多,而且对于小样本量问题也很健壮。在流行的数据库上进行了彻底的实验,以验证模型的有效性,效率和鲁棒性。

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