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基于结构聚类的图像去噪 被引量:5

Image denoising based on structure clustering
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摘要 为了克服传统BM3D去噪算法的不足,根据图像局部结构相似性提出了基于结构聚类的图像去噪算法。首先根据均值进行粗聚类构成块群;其次利用鲁棒数据归一化构造结构相似子群;最后对子群进行去噪,如果子群容量大于1,运用BM3D对该子群进行去噪处理,反之,运用基于阈值的DCT去噪算法对该块进行去噪。实验结果表明,该算法保护了图像的结构信息,相对于传统BM3D算法提高了图像的视觉效果。 In order to overcome the deficiencies of traditional denoising algorithm BM3D,this paper proposed denoising algorithm based on structure clustering according to the local structural similarity.First,processing coarse clustering to get block group according to the mean,followed by the use of robust data normalization to construct structure similar subgroup.At last,denoising the subgroup,if subgroup capacity is greater than one,using BM3D to denoise the subgroup,on the contrary,using DCT denoising algorithm based on the threshold to denoise the block.The experimental results show that the algorithm protects the structure of the image information and improves the image visual effects compared with traditional BM3D algorithm.
出处 《计算机应用研究》 CSCD 北大核心 2013年第4期1234-1236,1262,共4页 Application Research of Computers
关键词 三维块匹配 图像去噪 结构聚类 结构相似子群 three-dimensional block matching image denoising structure clustering structure similar subgroup
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参考文献15

  • 1BUADES A, COLL B, MOREL J M. A :view of image denoising algo- rithms with a new one [ J ]. Multiscale Modeling and Simulation, 2005,2(4) :490-530.
  • 2HAJIABOL M R. A self-govenfing fourth-order nonlinear diffusion fil- ter for image uoise removal [ J]. IPSJ Trans on Computer Vision and Applications ,2010,2:94-103.
  • 3AL-AMRI M S S,KALYANKAR N V, KHAMITKAR S D A. Compa- rative study of removal noise from remote sensing image[ J]. IJCSI In- ternational Journal of Computer Science Issues, 2010,7 ( [ ) : 32-36.
  • 4FOI A ,KATKOVNIK V ,EGIAZABIAN K. Pointwise shape-adaptive DCT for high-quality denoising and deblocking of gTayscale mad color images [J]. IEEE Trans on Image Process,2007,16(5) :1395-1411.
  • 5FENG Rong, DENG Wei. A new algorithm of image denoising based on stationary wavelet multi-scale adaptive threshold [ C ]//Proc of In- ternational Conference on Electronic and Mechanical Engineering and Information Technology. 2011:4550-4553.
  • 6YU Han-cheng,ZHAO Li, WANG Hai-xian. Image denoising using tri- variate shrinkage filter in the wavelet domain and joint bilateral filter in the spatial domain [ J ]. IEEE Trans on Imago Processing, 2009,18(10) :2364-2369.
  • 7ELAD M, AHARON M. Image denoising via sparse and redundant representations over learned dictionaries[J]. IEEE Yrans on Imago Processing, 2006,15 ( 12 ) : 3736 - 3745.
  • 8MARONNA R A. Principal components and orthogonal regression based on robust scales [ J ]. Technometrics ,2005,47 (3) :264- 273.
  • 9刘晓明,田雨,何徽,仲元红.一种改进的非局部均值图像去噪算法[J].计算机工程,2012,38(4):199-201. 被引量:32
  • 10DABOV K, FOIFOI A, KATKOVNIK V, et al. Image denoising by sparse 3-D transform-domain collaborative filtering [ J]. IEEE Trans on Image Processing,2007,16 ( 8 ) :2080- 2095.

二级参考文献24

  • 1Tomasi C, Manduchi R. Bilateral filtering for gray and color images [ C ]//Computer Vision, Sixth International Conference on, 1998 : 839-846.
  • 2Buades A, Coil B, Morel J M. A non-local algorithm for image denoising[ C]////Computer Vision and Pattern Rec- ognition, 2005, IEEE Computer Society Conference on, 2005 : 60-65.
  • 3Elad M. Sparse and Redundant Representations: From Theo- ry to Applications in Signal and Image Processing [ M ]. Springer Verlag, 2010.
  • 4Mallat S G, Zhifeng Z. Matching pursuits with time-fre- quency dictionaries [ J ]. Signal Processing, IEEE Trans- actions on, 1993, 41(12) : 3397-3415.
  • 5Fu W J. Penalized regressions: the bridge versus the las- so[J]. Journal of computational and graphical statistics, 1998, 7(3) : 397-416.
  • 6Friedman J, Hastie T, H Fling H, et al. Pathwise eoordi- nate optimization [ J ]. The Annals of Applied Statisties, 2007, 1(2) : 302-332.
  • 7Aharon M, Elad M, Bruekstein A. K-SVD: An Algorithm for Designing Overeomplete Dictionaries for Sparse Repre- sentation[ J]. Signal Processing, IEEE Transactions on, 2006, 54(11) : 4311-4322.
  • 8Elad M, Aharon M. Image Denoising Via Sparse and Re- dundant Representations Over Learned Dictionaries [ J ]. Image Processing, IEEE Transactions on, 2006, 15 (12) : 3736-3745.
  • 9Starck J L, Elad M, Donoho D L. Image decomposition via the combination of sparse representations and a varia- tional approach [ J ]. Image Processing, IEEE Transac- tions on, 2005, 14(10) : 1570-1582.
  • 10Yuan M, Lin Y. Model selection and estimation in regres- sion with grouped variables[ J]. Journal of the Royal Sta- tistical Society: Series B ( Statistical Methodology ), 2006, 68 ( 1 ) : 49- 67.

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