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No-reference image quality metric based on multiple deep belief networks

机译:基于多个深度置信网络的无参考图像质量度量

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摘要

The last decade has witnessed great advances in digital images. These images are subjected to many processing stages during storing, transmitting, or sharing over a network connection. Unfortunately, these processing stages could potentially add visual degradation to original image. These degradations reduce the perceived visual quality which leads to an unsatisfactory experience for human viewers. Therefore, image quality assessment (IQA) has become a topic of high interest and intense research over the last decade. This study mainly focuses on the most challenging category of IQA general-purpose No-Reference Image Quality Assessment (NR-IQA), where the goal is to assess the quality of images without information about the reference images and without prior knowledge about the types of distortions in the tested image. A novel NR-IQA approach is presented, by utilizing multiple deep belief networks (DBNs) with multiple regression models. It consists of four DBNs. Each DBN is associated with one type of distortion. The authors have evaluated the performance of the proposed and some existing models on a fair basis. The obtained results show that their model gives better results and yield a significant improvement.
机译:过去十年见证了数字图像的巨大进步。这些图像在通过网络连接进行存储,传输或共享期间会经历许多处理阶段。不幸的是,这些处理阶段可能会增加原始图像的视觉质量。这些劣化降低了感知的视觉质量,这导致人类观看者的体验不令人满意。因此,在过去的十年中,图像质量评估(IQA)已成为人们高度关注和深入研究的主题。这项研究主要集中在最具挑战性的IQA通用无参考图像质量评估(NR-IQA)类别上,其目标是在没有参考图像信息且没有事先知道图像类型的情况下评估图像质量。测试图像中的失真。通过利用具有多个回归模型的多个深度置信网络(DBN),提出了一种新颖的NR-IQA方法。它由四个DBN组成。每个DBN与一种类型的失真相关联。作者在公平的基础上评估了提出的模型和一些现有模型的性能。获得的结果表明,他们的模型给出了更好的结果,并且产生了显着的改进。

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