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HDR IMAGE QUALITY ASSESSMENT USING MACHINE-LEARNING BASED COMBINATION OF QUALITY METRICS

机译:HDR图像质量评估使用基于机器学习的质量指标组合

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We present a Full-Reference Image Quality Assessment (FR-IQA) approach to improve High Dynamic Range (HDR) IQA by combining results from various quality metrics (HDR-CQM). To combine these results, we apply linear regression and various machine learning techniques such as multilayer perceptron, random forest, random trees, radial basis function network and support vector machine (SVM) regression. We found that using a non-linear combination of scores from different quality metrics using SVM is better at prediction than the other techniques. We use the Sequential Forward Floating Selection technique to select a subset of metrics from a list of quality metrics to improve performance and reduce complexity. We demonstrate improved performance using HDR-CQM as compared to a number of existing IQA metrics. We find that our HDR-CQM metric comprised of only four metrics can obtain statistically significant improvement over HDR video quality measure (HDR-VQM), the best performing individual IQA metric for HDR still images.
机译:我们通过组合来自各种质量指标(HDR-CQM)的结果来提高全参考图像质量评估(FR-IQA)方法来提高高动态范围(HDR)IQA。为了结合这些结果,我们应用线性回归和各种机器学习技术,如多层的感知,随机林,随机树,径向基函数网络和支持向量机(SVM)回归。我们发现,使用SVM使用SVM的不同质量度量的分数的非线性组合比其他技术更好。我们使用顺序前进浮动选择技术从质量指标列表中选择度量的子集,以提高性能并降低复杂性。与许多现有的IQA指标相比,我们使用HDR-CQM展示了改进的性能。我们发现,我们的HDR-CQM指标仅由四个指标组成,可以通过HDR视频质量测量(HDR-VQM)来获得统计上显着的改进,是HDR静止图像的最佳性能IQA度量。

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