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Convex-Set-Constrained Sparse Signal Recovery: Theory and Applications

机译:凸集约束的稀疏信号恢复:理论与应用

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摘要

Convex-set constrained sparse signal reconstruction facilitates flexible measurement model and accurate recovery. The objective function that we wish to minimize is a sum of a convex differentiable data-fidelity (negative log-likelihood (NLL)) term and a convex regularization term. We apply sparse signal regularization where the signal belongs to a closed convex set within the closure of the domain of the NLL. Signal sparsity is imposed using the l1-norm penalty on the signal's linear transform coefficients.;First, we present a projected Nesterov's proximal-gradient (PNPG) approach that employs a projected Nesterov's acceleration step with restart and a duality-based inner iteration to compute the proximal mapping. We propose an adaptive step-size selection scheme to obtain a good local majorizing function of the NLL and reduce the time spent backtracking. We present an integrated derivation of the momentum acceleration and proofs of O(k--2) objective function convergence rate and convergence of the iterates, which account for adaptive step size, inexactness of the iterative proximal mapping, and the convex-set constraint. The tuning of PNPG is largely application independent. Tomographic and compressed-sensing reconstruction experiments with Poisson generalized linear and Gaussian linear measurement models demonstrate the performance of the proposed approach.;We then address the problem of upper-bounding the regularization constant for the convex-set--constrained sparse signal recovery problem behind the PNPG framework. This bound defines the maximum influence the regularization term has to the signal recovery. We formulate an optimization problem for finding these bounds when the regularization term can be globally minimized and develop an alternating direction method of multipliers (ADMM) type method for their computation. Simulation examples show that the derived and empirical bounds match.;Finally, we show application of the PNPG framework to X-ray computed tomography (CT) and outline a method for sparse image reconstruction from Poisson-distributed polychromatic X-ray CT measurements under the blind scenario where the material of the inspected object and the incident energy spectrum are unknown. To obtain a parsimonious mean measurement-model parameterization, we first rewrite the measurement equation by changing the integral variable from photon energy to mass attenuation, which allows us to combine the variations brought by the unknown incident spectrum and mass attenuation into a single unknown mass-attenuation spectrum function; the resulting measurement equation has the Laplace integral form. We apply a block coordinate-descent algorithm that alternates between an NPG image reconstruction step and a limited-memory BFGS with box constraints (L-BFGS-B) iteration for updating mass-attenuation spectrum parameters. Our NPG-BFGS algorithm is the first physical-model based image reconstruction method for simultaneous blind sparse image reconstruction and mass-attenuation spectrum estimation from polychromatic measurements. Real X-ray CT reconstruction examples demonstrate the performance of the proposed blind scheme.
机译:凸集约束的稀疏信号重建有助于灵活的测量模型和准确的恢复。我们希望最小化的目标函数是凸可微数据保真度(负对数似然(NLL))项和凸正则化项的和。我们应用稀疏信号正则化,其中信号属于NLL域的闭合范围内的闭合凸集。使用l1-norm惩罚对信号的线性变换系数施加信号稀疏性;首先,我们提出一种投影Nesterov的近端梯度(PNPG)方法,该方法采用投影Nesterov的加速步骤并重新启动和基于对偶的内部迭代来计算近端贴图。我们提出了一种自适应的步长选择方案,以获得NLL的良好局部主化功能并减少回溯所花费的时间。我们提出了动量加速度的综合推导以及O(k--2)目标函数收敛速度和迭代次数收敛的证明,这些因素说明了自适应步长,迭代近端映射的不精确性以及凸集约束。 PNPG的调整在很大程度上与应用程序无关。用泊松广义线性和高斯线性测量模型进行层析成像和压缩感测重建实验证明了该方法的性能。;然后我们解决了凸集约束稀疏信号恢复问题背后的正则化常数上限的问题PNPG框架。该界限定义了正则项对信号恢复的最大影响。当正则项可以全局最小化时,我们提出了一个寻找这些边界的优化问题,并开发了乘数交替方向法(ADMM)类型的方法进行计算。仿真实例表明,导出的和经验的边界是匹配的。最后,我们展示了PNPG框架在X射线计算机断层扫描(CT)中的应用,并概述了在以下条件下利用泊松分布多色X射线CT测量进行稀疏图像重建的方法。未知物体的视场和入射能谱是未知的。为了获得简约的平均测量模型参数化,我们首先通过将积分变量从光子能量更改为质量衰减来重写测量方程,这使我们能够将未知入射光谱和质量衰减​​带来的变化组合为单个未知质量-衰减谱函数;得到的测量方程具有拉普拉斯积分形式。我们应用了块坐标下降算法,该算法在NPG图像重建步骤与具有框约束(L-BFGS-B)迭代的有限内存BFGS之间交替,以更新质量衰减谱参数。我们的NPG-BFGS算法是第一种基于物理模型的图像重建方法,用于同时进行盲稀疏图像重建和多色测量的质量衰减谱估计。实际的X射线CT重建实例证明了所提出的盲方案的性能。

著录项

  • 作者

    Gu, Renliang.;

  • 作者单位

    Iowa State University.;

  • 授予单位 Iowa State University.;
  • 学科 Electrical engineering.;Statistics.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 144 p.
  • 总页数 144
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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