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A reduced-reference quality assessment metric for super-resolution reconstructed images with information gain and texture similarity

机译:具有信息增益和纹理相似性的超分辨率重建图像的减少参考质量评估度量

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摘要

Super-resolution (SR) image reconstruction has been extensively studied in recent years due to its broad uses in machine vision, medical imaging, remote sensing and monitoring systems. However, evaluating the performance of SR algorithms is still an ongoing problem. A number of image quality metrics have been reported in recent years, however, they are not specifically designed for SR reconstructed images, so they are usually limited when assessing SR images. Here, we propose a reduced-reference image quality assessment (IQA) metric for SR images. First, saliency detection is used on the high-resolution (HR) images, and low-resolution (LR) images are used to generate the corresponding saliency maps. Second, the information gain and texture similarity between the HR images and the LR images are calculated to quantify the image quality degradation. Finally, the information gain and the texture similarity are weighted to predict the quality of SR images. Extensive experiments illustrate that the proposed metric has better performance for SR images than the existing state-of-the-art IQA algorithms.
机译:由于其在机器视觉,医学成像,遥感和监测系统的广泛用途,近年来,超分辨率(SR)图像重建已被广泛研究。但是,评估SR算法的性能仍然是一个持续的问题。近年来已经报道了许多图像质量指标,但是,它们没有专门为SR重建图像设计,因此在评估SR图像时通常限制。在这里,我们提出了SR图像的减少参考图像质量评估(IQA)度量。首先,在高分辨率(HR)图像上使用显着性检测,并且低分辨率(LR)图像用于生成相应的显着图。其次,计算HR图像和LR图像之间的信息增益和纹理相似度以量化图像质量劣化。最后,加权信息增益和纹理相似度以预测SR图像的质量。广泛的实验说明所提出的度量比现有的最先进的IQA算法具有更好的SR图像性能。

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