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Comparison of No-Reference Image Quality Assessment Machine Learning-based Algorithms on Compressed Images

机译:基于无参​​考图像质量评估的机器学习压缩图像算法比较

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摘要

No-reference image quality metrics are of fundamental interest as they can be embedded in practical applications. The main goal of this paper is to perform a comparative study of seven well known no-reference learning-based image quality algorithms. To test the performance of these algorithms, three public databases are used. As a first step, the trial algorithms are compared when no new learning is performed. The second step investigates how the training set influences the results. The Spearman Rank Ordered Correlation Coefficient (SROCC) is utilized to measure and compare the performance. In addition, an hypothesis test is conducted to evaluate the statistical significance of performance of each tested algorithm.
机译:无参考图像质量指标非常重要,因为它们可以嵌入实际应用中。本文的主要目的是对七个众所周知的无参考学习的图像质量算法进行比较研究。为了测试这些算法的性能,使用了三个公共数据库。第一步,在不执行新学习时比较试用算法。第二步研究训练集如何影响结果。 Spearman等级有序相关系数(SROCC)用于测量和比较性能。此外,进行假设检验以评估每种测试算法性能的统计显着性。

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