您的位置: 专家智库 > >

国家自然科学基金(61102043)

作品数:2 被引量:2H指数:1
相关作者:张明辉梁栋刘且根更多>>
相关机构:中国科学院南昌大学更多>>
发文基金:国家自然科学基金更多>>
相关领域:生物学自动化与计算机技术更多>>

文献类型

  • 2篇中文期刊文章

领域

  • 1篇生物学
  • 1篇自动化与计算...

主题

  • 2篇REGULA...
  • 2篇ITERAT...
  • 2篇GRAPH
  • 1篇SPARSE
  • 1篇TWO-LE...
  • 1篇DICTIO...
  • 1篇MAGNET...
  • 1篇METHOD

机构

  • 1篇南昌大学
  • 1篇中国科学院

作者

  • 1篇刘且根
  • 1篇梁栋
  • 1篇张明辉

传媒

  • 1篇Journa...
  • 1篇Journa...

年份

  • 1篇2015
  • 1篇2013
2 条 记 录,以下是 1-2
排序方式:
Two-level Bregmanized method for image interpolation with graph regularized sparse coding被引量:1
2013年
A two-level Bregmanized method with graph regularized sparse coding (TBGSC) is presented for image interpolation. The outer-level Bregman iterative procedure enforces the observation data constraints, while the inner-level Bregmanized method devotes to dictionary updating and sparse represention of small overlapping image patches. The introduced constraint of graph regularized sparse coding can capture local image features effectively, and consequently enables accurate reconstruction from highly undersampled partial data. Furthermore, modified sparse coding and simple dictionary updating applied in the inner minimization make the proposed algorithm converge within a relatively small number of iterations. Experimental results demonstrate that the proposed algorithm can effectively reconstruct images and it outperforms the current state-of-the-art approaches in terms of visual comparisons and quantitative measures.
刘且根张明辉梁栋
Graph Regularized Sparse Coding Method for Highly Undersampled MRI Reconstruction被引量:1
2015年
The imaging speed is a bottleneck for magnetic resonance imaging( MRI) since it appears. To alleviate this difficulty,a novel graph regularized sparse coding method for highly undersampled MRI reconstruction( GSCMRI) was proposed. The graph regularized sparse coding showed the potential in maintaining the geometrical information of the data. In this study, it was incorporated with two-level Bregman iterative procedure that updated the data term in outer-level and learned dictionary in innerlevel. Moreover,the graph regularized sparse coding and simple dictionary updating stages derived by the inner minimization made the proposed algorithm converge in few iterations, meanwhile achieving superior reconstruction performance. Extensive experimental results have demonstrated GSCMRI can consistently recover both real-valued MR images and complex-valued MR data efficiently,and outperform the current state-of-the-art approaches in terms of higher PSNR and lower HFEN values.
张明辉尹子瑞卢红阳吴建华刘且根
共1页<1>
聚类工具0