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首页> 外文期刊>Signal Processing Letters, IEEE >Blind Image Quality Assessment Without Human Training Using Latent Quality Factors
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Blind Image Quality Assessment Without Human Training Using Latent Quality Factors

机译:无需人工训练就可以使用潜在质量因子进行盲图质量评估

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摘要

We propose a highly unsupervised, training free, no reference image quality assessment (IQA) model that is based on the hypothesis that distorted images have certain latent characteristics that differ from those of “natural” or “pristine” images. These latent characteristics are uncovered by applying a “topic model” to visual words extracted from an assortment of pristine and distorted images. For the latent characteristics to be discriminatory between pristine and distorted images, the choice of the visual words is important. We extract quality-aware visual words that are based on natural scene statistic features . We show that the similarity between the probability of occurrence of the different topics in an unseen image and the distribution of latent topics averaged over a large number of pristine natural images yields a quality measure. This measure correlates well with human difference mean opinion scores on the LIVE IQA database .
机译:我们提出了一种高度无监督,无训练的无参考图像质量评估(IQA)模型,该模型基于以下假设:扭曲的图像具有与“自然”或“原始”图像不同的某些潜在特征。通过对从各种原始图像和变形图像中提取的视觉单词应用“主题模型”,可以发现这些潜在特征。为了区分原始图像和失真图像的潜在特征,视觉单词的选择很重要。我们提取基于自然场景统计特征的质量感知视觉单词。我们表明,在看不见的图像中出现不同主题的概率与在大量原始自然图像中平均得到的潜在主题的分布之间的相似性产生了一种质量度量。此度量与LIVE IQA数据库上的人类差异平均意见得分具有很好的相关性。

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