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Tensor completion for multidimensional inverse problems with applications to magnetic resonance relaxometry.

机译:应用于磁共振弛豫法的多维反问题的张量完成。

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摘要

This thesis deals with tensor completion for the solution of multidimensional inverse problems. We study the problem of reconstructing an approximately low rank tensor from a small number of noisy linear measurements. New recovery guarantees, numerical algorithms, non-uniform sampling strategies, and parameter selection algorithms are developed.;We derive a fixed point continuation algorithm for tensor completion and prove its convergence. A restricted isometry property (RIP) based tensor recovery guarantee is proved. Probabilistic recovery guarantees are obtained for sub-Gaussian measurement operators and for measurements obtained by non-uniform sampling from a Parseval tight frame.;We show how tensor completion can be used to solve multidimensional inverse problems arising in NMR relaxometry. Algorithms are developed for regularization parameter selection, including accelerated k-fold cross-validation and generalized cross-validation. These methods are validated on experimental and simulated data. We also derive condition number estimates for nonnegative least squares problems.;Tensor recovery promises to significantly accelerate N-dimensional NMR relaxometry and related experiments, enabling previously impractical experiments. Our methods could also be applied to other inverse problems arising in machine learning, image processing, signal processing, computer vision, and other fields.
机译:本文针对张量完备问题对多维逆问题的求解。我们研究了从少量噪声线性测量中重建近似低秩张量的问题。开发了新的恢复保证,数值算法,非均匀采样策略和参数选择算法。我们导出了张量完成的不动点连续算法并证明了其收敛性。证明了基于受限等轴特性(RIP)的张量恢复保证。为亚高斯测量算子和通过从Parseval紧框架中进行非均匀采样获得的测量结果提供了概率恢复保证。我们展示了如何使用张量完成来解决NMR弛豫法中出现的多维逆问题。开发了用于正则化参数选择的算法,包括加速的k倍交叉验证和广义交叉验证。这些方法已在实验和模拟数据上得到验证。我们还可以得出非负最小二乘问题的条件数估计值;张量恢复有望显着加速N维NMR弛豫和相关实验,从而使以前不切实际的实验成为可能。我们的方法还可以应用于机器学习,图像处理,信号处理,计算机视觉和其他领域中出现的其他逆问题。

著录项

  • 作者

    Hafftka, Ariel.;

  • 作者单位

    University of Maryland, College Park.;

  • 授予单位 University of Maryland, College Park.;
  • 学科 Applied mathematics.;Mathematics.;Medical imaging.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 171 p.
  • 总页数 171
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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