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Neural network-based image quality comparator without collecting the human score for training

机译:基于神经网络的图像质量比较器而不收集人为的培训

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摘要

Emulating human behaviours in automated image quality assessment (IQA) enables a comparator framework to remove the differences in human bias naturally. Based on the observation of the practical applications of IQA, this study focuses on similar-content image quality comparison based on a new image quality comparator (IQC). Outstanding proven IQAs can be utilised in this comparator to achieve a new non-linear combination strategy to boost the IQAs' performance in image quality comparison. For both input images to be compared, proven IQAs are utilised to obtain nine features from each image, yielding 18 total features. Then, a four-layer comparison network conducts a classification task to indicate which input image has better quality. In the training phase, the commonly used human scores as training labels are replaced with pairwise comparison results that are automatically generated from assigned distortion level differences. By not utilising human score in training phase, this IQC shows two advantages: (i) it removes huge labor and time cost to collect the human scores and (ii) it solves the problem of over-fitting benefiting from simplicity of creating a large image training dataset. Furthermore, the experimental tests and cross-dataset validation comparison tests demonstrate its impressive performance.
机译:在自动图像质量评估中模拟人类行为(IQA)使比较器框架能够自然地消除人类偏差的差异。基于观察IQA的实际应用,本研究重点是基于新的图像质量比较器(IQC)的类似内容图像质量比较。在此比较器中可以使用出色的验证IQAS,以实现新的非线性组合策略,以提高IQAS在图像质量比较中的性能。对于要进行比较的两个输入图像,已验证的IQAS用于从每个图像获得九个特征,产生18个总特征。然后,四层比较网络进行分类任务以指示哪个输入图像具有更好的质量。在训练阶段,常用的人类分数作为训练标签被替换为从分配的失真级别差异自动生成的成对比较结果。通过在培训阶段不利用人道分数,这一IQC显示出两种优势:(i)它消除了巨大的劳动力和时间成本,以收集人类分数和(ii)它解决了从创造大型图像的简单性的过度效益的问题培训数据集。此外,实验测试和交叉数据集验证比较测试表明其令人印象深刻的性能。

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