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Learning stacking regression for no-reference super-resolution image quality assessment

机译:学习堆叠回归无参考超分辨率图像质量评估

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摘要

No-reference super-resolution (SR) image quality assessment (NR-SRIQA) aims to evaluate the quality of SR images without relying on any reference images. Currently, most previous methods usually utilize a certain handcrafted perceptual statistical features to quantify the degradation of SR images and a simple regression model to learn the mapping relationship from the features to the perceptual quality. Although these methods achieved promising performance, they still have some limitations: 1) the handcrafted features cannot accurately quantify the degradation of SR images; 2) the complex mapping relationship between the features and the quality scores cannot be well approximated by a simple regression model. To alleviate the above problems, we propose a novel stacking regression framework for NR-SRIQA. In the proposed method, we use a pre-trained VGGNet to extract the deep features for measuring the degradation of SR images, and then develop a stacking regression framework to establish the relationship between the learned deep features and the quality scores to achieve the NR-SRIQA. The stacking regression integrates two base regressors, namely Support Vector Regression (SVR) and K-Nearest Neighbor (K-NN) regression, and a simple linear regression as a meta-regressor. Thanks to the feature representation capability of deep neural networks (DNNs) and the complementary features of the two base regressors, the experimental results indicate that the proposed stacking regression framework is capable of yielding higher consistency with human visual judgments on the quality of SR images than other state-of-the-art SRIQA methods.
机译:无参考超分辨率(SR)图像质量评估(NR-Sriqa)旨在评估SR图像的质量而不依赖于任何参考图像。目前,最先前的方法通常利用某种手绘感知统计特征来量化SR图像的劣化和简单的回归模型,以从特征到感知质量的映射关系。虽然这些方法实现了有希望的性能,但它们仍然有一些限制:1)手工制作的功能不能准确地量化SR图像的降级; 2)特征与质量分数之间的复杂映射关系不能通过简单的回归模型很好地近似。为了减轻上述问题,我们向NR-Sriqa提出了一种新的堆叠回归框架。在该方法中,我们使用预先训练的Vggnet来提取用于测量SR图像的降级的深度功能,然后开发一个堆叠回归框架,以建立学习的深度特征与质量分数之间的关系,以实现NR-斯里卡。堆叠回归集成了两个基本回归,即支持向量回归(SVR)和k最近邻(K-Nn)回归,以及作为元回收器的简单线性回归。由于深神经网络(DNN)的特征表示能力和两个基本回归流器的互补特征,实验结果表明,所提出的堆叠回归框架能够与人类视觉判断产生更高的符合SR图像图像的判断其他最先进的SRIQA方法。

著录项

  • 来源
    《Signal processing》 |2021年第1期|107771.1-107771.11|共11页
  • 作者单位

    School of Electronics and Information Xi'an Polytechnic University Xi'an 710048 China;

    School of Electronics and Information Xi'an Polytechnic University Xi'an 710048 China;

    School of Electronic Engineering Xidian University Xi'an 710071 China;

    The Chongqing Key Laboratory of Image Cognition Chongqing University of Posts and Telecommunications Chongqing 400065 China;

    School of Electronic Engineering Xidian University Xi'an 710071 China;

    School of Electronics and Information Xi'an Polytechnic University Xi'an 710048 China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    No-reference (NR); Super-resolution (SR) image quality; assessment (SRIQA); Stacking regression;

    机译:没有参考(NR);超分辨率(SR)图像质量;评估(SRIQA);堆叠回归;

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