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Efficient neural-network-based no-reference approach to an overall quality metric for JPEG and JPEG2000 compressed images

机译:基于JPEG和JPEG2000压缩图像的整体质量指标的基于神经网络的无参考方法

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摘要

Reliably assessing overall quality of JPEG/JPEG2000 coded images without having the original image as a reference is still challenging, mainly due to our limited understanding of how humans combine the various perceived artifacts to an overall quality judgment. A known approach to avoid the explicit simulation of human assessment of overall quality is the use of a neural network. Neural network approaches usually start by selecting active features from a set of generic image characteristics, a process that is, to some extent, rather ad hoc and computationally extensive. This paper shows that the complexity of the feature selection procedure can be considerably reduced by using dedicated features that describe a given artifact. The adaptive neural network is then used to learn the highly nonlinear relationship between the features describing an artifact and the overall quality rating. Experimental results show that the simplified feature selection procedure, in combination with the neural network, indeed are able to accurately predict perceived image quality of JPEG/JPEG2000 coded images.
机译:在不以原始图像作为参考的情况下,可靠地评估JPEG / JPEG2000编码图像的整体质量仍然具有挑战性,这主要是由于我们对人类如何将各种感知到的伪像结合到整体质量判断上的了解有限。避免对人类对总体质量的评估进行显式模拟的已知方法是使用神经网络。神经网络方法通常是从一组通用图像特征中选择活动特征开始的,该过程在某种程度上相当临时且计算量很大。本文表明,通过使用描述给定伪像的专用特征,可以大大降低特征选择过程的复杂性。然后使用自适应神经网络来学习描述工件的特征与总体质量等级之间的高度非线性关系。实验结果表明,简化的特征选择过程与神经网络相结合,确实能够准确预测JPEG / JPEG2000编码图像的感知图像质量。

著录项

  • 来源
    《Journal of electronic imaging》 |2011年第4期|p.043007.1-043007.15|共15页
  • 作者单位

    Delft University of Technology Department of Mediamatics Delft, The Netherlands;

    Delft University of Technology Department of Mediamatics Delft, The Netherlands;

    Delft University of Technology Department of Mediamatics Delft, The Netherlands;

    University of Genoa Department of Biophysical and Electronic Engineering Genoa, Italy;

    Delft University of Technology Department of Mediamatics Delft, The Netherlands Philips Research Laboratories Group Visual Experiences Eindhoven, The Netherlands;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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