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Hybrid No-Reference Natural Image Quality Assessment of Noisy, Blurry, JPEG2000, and JPEG Images

机译:嘈杂,模糊,JPEG2000和JPEG图像的混合无参考自然图像质量评估

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摘要

In this paper, we propose a new image quality assessment method based on a hybrid of curvelet, wavelet, and cosine transforms called hybrid no-reference (HNR) model. From the properties of natural scene statistics, the peak coordinates of the transformed coefficient histogram of filtered natural images occupy well-defined clusters in peak coordinate space, which makes NR possible. Compared to other methods, HNR has three benefits: 1) It is an NR method applicable to arbitrary images without compromising the prediction accuracy of full-reference methods; 2) as far as we know, it is the only general NR method well suited for four types of filters: noise, blur, JPEG2000, and JPEG compression; and 3) it can classify the filter types of the image and predict filter levels even when the image is results from the application of two different filters. We tested HNR on very intensive video image database (our image library) and Laboratory for Image & Video Engineering (a public library). Results are compared to the state-of-the-art methods including peak SNR, structural similarity, visual information fidelity, and so on.
机译:在本文中,我们提出了一种基于曲线波,小波和余弦变换的混合图像质量评估的新方法,称为混合无参考(HNR)模型。从自然场景统计的属性来看,经过滤波的自然图像的变换系数直方图的峰坐标在峰坐标空间中占据了明确定义的簇,这使得降噪成为可能。与其他方法相比,HNR具有三个优点:1)它是一种适用于任意图像而又不影响全参考方法的预测精度的NR方法; 2)据我们所知,它是唯一适用于四种类型的滤镜的常规降噪方法:噪声,模糊,JPEG2000和JPEG压缩; 3)即使图像是应用两个不同滤镜的结果,它也可以对图像的滤镜类型进行分类并预测滤镜级别。我们在非常密集的视频图像数据库(我们的图像库)和图像与视频工程实验室(一个公共图书馆)上测试了HNR。将结果与包括峰值SNR,结构相似性,视觉信息保真度等最新技术的方法进行比较。

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