期刊文献+

基于分形维数的图像质量客观评价方法研究 被引量:2

A Criterion of Objectively Assessing Image Quality Based on Fractal Dimension
在线阅读 下载PDF
导出
摘要 建立图像质量客观评价模型对于图像编码、增强、重建以及分析等领域具有重要的现实意义。鉴于传统的图像质量评价方法的评价结果与主观感知存在较大的误差等缺陷,为此从分形角度考虑,并兼顾人眼视觉特性,首先提取了分形维数作为图像质量的评价指标;然后从非线性角度来表征引起人眼视觉敏感变化的图像亮度以及纹理信息,并将能准确反映图像质量变化的空隙度参数作为有效补偿;最后采用线性回归分析直接对图像进行建模,并将分形维数差值和空隙度差值两分量表示在统一的模型中。实验证明,相对于传统的PSNR和SSIM评价指标而言,该评价模型不仅对于不同类型的失真、相同失真类型的不同失真级别的图像能够准确进行评估,而且与主观评价值(MOS)具有更好的关联性,即与人眼视觉感受具有较高的吻合性,同时能够实现对图像质量进行全面、科学的评价。 It is very urgent to build an evaluation criterion in image compression, enhancement, restoration and analysis fields. In this paper, fractal dimension is utilized to be an image quality assessment index and describe image luminance and texture characteristics from non-linear aspects. Lacunarity changes can also describe image quality. Therefore fractal dimension difference and lacunarity difference are integrated into one single mathematics model by linear regression analysis. Experiment results show that against traditional model such as PSNR, SSIM and so on, the proposed approach can not only assess different distortion types, same distortion type with different distortion levers accurately, but also has stronger correlation with MOS, more agreement with the perceptual of human beings, and can assess image quality accurately and effectively.
出处 《中国图象图形学报》 CSCD 北大核心 2009年第4期657-662,共6页 Journal of Image and Graphics
基金 国家自然科学基金项目(60872090) 浙江省重大科技专项(2008C01015-2) 浙江省新苗人才计划项目(2008R40G2040120)
关键词 质量评价 分形维数 空隙度 结构相似法 峰值信噪比 quality assessment,fractal dimension,lacunarity,SSIM,PSNR
  • 相关文献

参考文献8

  • 1Zhou Wang, Bovik A C, Lu Li-gang. Why is image quality assessment so difficult? [ J ]. Acoustics, Speech and Signal Processing, 2002, 4(8) : 3313-3316.
  • 2Lin D C, Chau P M. Objective human visual system based video ouality assessment metric for low bit-rate video communication systems [ A ]. In: Proceedings of IEEE 8th Workshop on Multimedia Signal Processing[ C] ,Victoria Canada, 2006:320-323.
  • 3Sheikh H R, Bovik A C. Image information and visual quality [ J ]. IEEE Transactions on Image Processing, 2006, 15 (2) : 430-444.
  • 4Zhou Wang, Bovik A C, Sheikh H R, et. al. Image quality assessment : from error visibility to structural similarity [ J ]. IEEE Transactions on Image Processing, 2004, 13(4) : 600-612.
  • 5Winkler S. Vision Models and Quality Metrics for Image Processing Applicati.ons [ EB/OL ]. http://stefan.winkler.net/publications. html, 2004-09-06.
  • 6Hyun K J, Chang K S, Jin K T. Fractat Dimension Co-occurrence Matrix Method for Texture Classification [ A ]. In:Proceedings of IEEE 10th Region Conference on Communications[ C ], Hong Kong, China, 2006 : 1-4.
  • 7Keller J M, Chen S. Texture description and segmentation through fractal geometry [ J ]. Computer Vision, Graphics and Image Processing, 1989, 45(2): 150-166.
  • 8LIVE- release2 _ database [ DB/OL ] . http://live. ece. utexas. edu/index. htm ,2007-07-06.

同被引文献66

  • 1王涛,高新波,张都应.一种基于内容的图像质量评价测度[J].中国图象图形学报,2007,12(6):1002-1007. 被引量:15
  • 2黄小乔,石俊生,杨健,姚军财.基于色差的均方误差与峰值信噪比评价彩色图像质量研究[J].光子学报,2007,36(B06):295-298. 被引量:24
  • 3朱里,李乔亮,张婷,汪国有.基于结构相似性的图像质量评价方法[J].光电工程,2007,34(11):108-113. 被引量:27
  • 4WANG Zhou,BOVIK A C. Modern image quality assessment[M].New York:Morgan and Claypool Publishing Company,2006.20-30.
  • 5WANG Zhou,BOVIK A C,SHEIKH H R. Image quality assessment:from error visibility to structural similarity[J].IEEE Transactions on Image Processing,2004,(04):600-612.
  • 6AVCIBAS I,SANBUR B,SAYOOD K. Statistical evaluation of image quality measures[J].JOURNAL OF ELECTRONIC IMAGING,2002,(02):206-213.
  • 7GIROD B. What's wrong with mean-squared error[A].Cambridge:The MIT Press,1993.207-220.
  • 8ESKICIOGLU A M,FISHER P S. Image quality measures and their performance[J].IEEE Transactions on Communications,1995,(12):2959-2965.
  • 9LI Bei,MEYER W,KLASSEN V R. A comparison of two image quality models[A].San Jose:SPIE Digital Library,1998.98-109.
  • 10DAMERA-VENKATA N,KITE T D,GEISLER W S. Image quality assessment based on a degradation model[J].IEEE Transactions on Image Processing,2000,(04):636-650.

引证文献2

二级引证文献93

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部