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基于TV准则的图像分块重构算法的研究 被引量:3

Image blocking reconstruction method based on TV-norm
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摘要 利用压缩感知理论进行图像重构时,基于分块思想进行可有效提高重构速度,但同时会带来较强的块效应。为了解决该问题,提出了一种基于TV准则的图像分块重构算法。该算法将基于整幅图像时梯度计算方法进行改进,充分利用已重构块的边界像素信息,从而有效消除了图像的块效应。实验结果表明,提出的算法能够有效消除图像的块效应,提高重构图像的主客观质量,与TVAL3算法相比,重构图像的PSNR值最多提高了0.84dB,时间最高可节省24.38%,算法尤其适用于低采样率的情况。 While using compressed sensing theory to process image reconstruction, the thinking based on the block may improve the speed of the reconstruction obviously, but this will bring a strong blocking effects. In order to solve the problem, an image block reconstruction algorithm based on TV norm is proposed, which improves the gra- dient calculation method based on the entire image, and makes full use of the boundary pixel information that has been reconstructed, thus the image blocking effects are eliminated effectively. Experimental results show that the proposed algorithm can effectively eliminate the image blocking effects, and enhance the reconstructed image' s sub- jective and objective quality. Compared with TVAL3 algorithm, the PSNR value of reconstructed image can in- crease 0.84 dB at most, and the reconstructed time can be saved as high as 24.38%. Additionally, the proposed algo- rithm is especially suitable for the case of low sampling rate.
出处 《计算机工程与应用》 CSCD 2012年第26期192-196,共5页 Computer Engineering and Applications
基金 国家自然科学青年基金(No.61101226) 内燃机燃烧学国家重点实验室开放课题资助(No.K2011-11)
关键词 压缩感知 图像重构 TV准则 图像分块 compressed sensing image reconstruction TV-norm image blocking
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  • 1Cand6s E J,Romberg J,Yao T.Robust uncertainty princi- ples: exact signal reconstruction from highly incomplete frequency information[J].IEEE Transactions on Informa- tion Theory, 2006,52(2 ) :489-509.
  • 2Donoho D L.Compressed sensing[J].lEEE Transactions on Information Theory,2006,52(4) : 1289-1306.
  • 3Gan L.Block compressed sensing of natural images[C]// Proceedings of the International Conference on Digital Signal Processing, Cardiff, UK, 2007 : 403-406.
  • 4Romberg J.Variational methods for compressive sampling[C]// Proceedings of SPIE,2007.
  • 5Li Chengbo.An efficient algorithm for total variation regularization with applications to the single pixel camera and compressive sensing[D].Houston: Rice University, 2009.
  • 6Romberg J.Imaging via compressive sampling[J].lEEE Signal Processing Magazine,2008,25(2). 14-20.
  • 7Candes E J, Romberg J.Sparsity and incoherence in compressive sampling[J].lnverse Problems, 2007, 23 (3) : 969-985.
  • 8Ma S, Yin W,Zhang Y,et al.An efficient algorithm for compressed MR imaging using total variation and wave- lets[C]//Proceedings of the IEEE Conference on Com- puter Vision and Pattern Recognition, Anchorage, USA, 2008 : 1-8.
  • 9Maleh R, Gilbert A C, Strauss M J.Sparse gradient image reconstruction done faster[C]//Proceedings of the Interna- tional Conference on Image Processing, San Antonio, USA, 2007 : 77-80.

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