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Low tensor-train rank with total variation for magnetic resonance imaging reconstruction

         

摘要

The model by imposing the low-rank minimization has been proved to be effective for magnetic resonance imaging(MRI) completion. Recent studies have also shown that imposing tensor train(TT) and total variation(TV) constraint on tensor completion can produce impressive performance, and the lower TT-rank minimization constraint can be represented as the guarantee for global constraint, while the total variation as the guarantee for regional constraint. In our solution, a new approach is utilized to solve TT-TV model. In contrast with imposing the alternating linear scheme, nuclear norm regularization on TT-ranks is introduced in our method as it is an effective surrogate for rank optimization and our solution does not need to initialize and update tensor cores. By applying the alternating direction method of multipliers(ADMM), the optimization model is disassembled into some sub-problems, singular value thresholding can be used as the solution to the first sub-problem and soft thresholding can be used as the solution to the second sub-problem. The new optimization algorithm ensures the effectiveness of data recovery. In addition, a new method is introduced to reshape the MRI data to a higher-dimensional tensor, so as to enhance the performance of data completion. Furthermore, the method is compared with some other methods including tensor reconstruction methods and a matrix reconstruction method. It is concluded that the proposed method has a better recovery accuracy than others in MRI data according to the experiment results.

著录项

  • 来源
    《中国科学》 |2021年第9期|P.1854-1862|共9页
  • 作者

    CHEN QiPeng; CAO JianTing;

  • 作者单位

    Graduate School of Engineering Saitama Institute of Technology Saitama 369-0293 JapanTensor Learning Unit RIKEN Center for Advanced Intelligence Project(AIP) Tokyo 351-0198 Japan;

    Graduate School of Engineering Saitama Institute of Technology Saitama 369-0293 JapanTensor Learning Unit RIKEN Center for Advanced Intelligence Project(AIP) Tokyo 351-0198 Japan;

  • 原文格式 PDF
  • 正文语种 chi
  • 中图分类 数学分析;
  • 关键词

    tensor; constraint; minimization;

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