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Training Quality-Aware Filters for No-Reference Image Quality Assessment

机译:训练质量感知过滤器以进行无参考图像质量评估

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摘要

With the rapid increase of digital imaging and communication technology usage, there's now great demand for fast and practical image quality assessment (IQA) algorithms that can predict an image's quality as consistently as humans. The authors propose a general-purpose, no-reference image quality assessment (NR-IQA) with the goal of developing a model that does not require prior knowledge about nondistorted reference images and the types of distortions. The key is to obtain effective image representations using learning quality-aware filters (QAFs). Unlike other regression models, they also use a random forest to train the mapping from the feature space. Extensive experiments conducted on the LIVE and CSIQ datasets demonstrate that the proposed NR-IQA metric QAF can achieve better prediction performance than the other state-of-the-art approaches in terms of both prediction accuracy and generalization capability.
机译:随着数字成像和通信技术使用量的快速增长,现在对快速,实用的图像质量评估(IQA)算法提出了很高的要求,该算法可以像人类一样预测图像的质量。作者提出了一种通用的无参考图像质量评估(NR-IQA),其目的是开发一种模型,该模型不需要有关非失真参考图像和失真类型的先验知识。关键是要使用学习质量感知过滤器(QAF)获得有效的图像表示。与其他回归模型不同,它们还使用随机森林来训练来自特征空间的映射。在LIVE和CSIQ数据集上进行的大量实验表明,就预测准确性和泛化能力而言,所提出的NR-IQA度量QAF可以实现比其他最新技术更好的预测性能。

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