首页> 外文期刊>IEEE Transactions on Signal Processing >CPGD: Cadzow Plug-and-Play Gradient Descent for Generalised FRI
【24h】

CPGD: Cadzow Plug-and-Play Gradient Descent for Generalised FRI

机译:CPGD:Cadzow即插即用渐变渐变下降,用于广义Fri

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

Finite rate of innovation (FRI) is a powerful reconstruction framework enabling the recovery of sparse Dirac streams from uniform low-pass filtered samples. An extension of this framework, called generalised FRI (genFRI), has been recently proposed for handling cases with arbitrary linear measurement models. In this context, signal reconstruction amounts to solving a joint constrained optimisation problem, yielding estimates of both the Fourier series coefficients of the Dirac stream and its so-called annihilating filter, involved in the regularisation term. This optimisation problem is however highly non convex and non linear in the data. Moreover, the proposed numerical solver is computationally intensive and without convergence guarantee. In this work, we propose an implicit formulation of the genFRI problem. To this end, we leverage a novel regularisation term which does not depend explicitly on the unknown annihilating filter yet enforces sufficient structure in the solution for stable recovery. The resulting optimisation problem is still non convex, but simpler since linear in the data and with less unknowns. We solve it by means of a provably convergent proximal gradient descent (PGD) method. Since the proximal step does not admit a simple closed-form expression, we propose an inexact PGD method, coined Cadzow plug-and-play gradient descent (CPGD). The latter approximates the proximal steps by means of Cadzow denoising, a well-known denoising algorithm in FRI. We provide local fixed-point convergence guarantees for CPGD. Through extensive numerical simulations, we demonstrate the superiority of CPGD against the state-of-the-art in the case of non uniform time samples.
机译:有限的创新率(FRI)是一种强大的重建框架,可以从均匀的低通滤波样品中恢复稀疏DIRAC流。最近已经提出了称为广义FRI(Genfri)的该框架的延伸,用于处理具有任意线性测量模型的情况。在这种情况下,信号重建量求解联合受限的优化问题,涉及正则化术语的傅立囊流的傅里叶系数的傅里叶系系数及其所谓的湮灭过滤器的估计。然而,这种优化问题在数据中具有高度凸性和非线性。此外,所提出的数值求解器是计算密集的且不收敛保障。在这项工作中,我们提出了对Genfri问题的隐性制定。为此,我们利用了一种新的正则化术语,该术语不在未知的湮灭过滤器上明确取决于解决方案中的足够的结构以进行稳定的恢复。得到的优化问题仍然是非凸,但自数据中的线性和未知数更简单。我们通过一种可怕的会聚近端梯度下降(PGD)方法来解决它。由于近端步骤不承认简单的闭合表格表达式,我们提出了一种不精确的PGD方法,Cadzow即插即用梯度下降(CPGD)。后者通过Cadzow Denoising,Fri识别的去噪算法近似于近端步骤。我们为CPGD提供本地的定点收敛保证。通过广泛的数值模拟,我们在非均匀时间样本的情况下展示了CPGD对现有技术的优越性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号