We propose a method to reconstruct sparse signals degraded by a nonlinear distortion and acquired at a limited sampling rate. Our method formulates the reconstruction problem as a nonconvex minimization of the sum of a data fitting term and a penalization term. In contrast with most previous works which settle for approximated local solutions, we seek for a global solution to the obtained challenging nonconvex problem. Our global approach relies on the so-called Lasserre relaxation of polynomial optimization. We here specifically include in our approach the case of piecewise rational functions, which makes it possible to address a wide class of nonconvex exact and continuous relaxations of the $\ell_0$ penalization function. Additionally, we study the complexity of the optimization problem. It is shown how to use the structure of the problem to lighten the computational burden efficiently. Finally, numerical simulations illustrate the benefits of our method in terms of both global optimality and signal reconstruction.
翻译:我们提出了重建因非线性扭曲而退化并以有限采样率获得的微弱信号的方法。我们的方法将重建问题描述为不精确地尽量减少数据适当术语和惩罚术语的总和。与以前大多数解决近似当地解决方案的工作相比,我们寻求全球解决获得的具有挑战性的非隐性问题的办法。我们的全球方法依赖于所谓的多营养优化放松拉塞尔。我们在这里特别将计件合理功能的情况纳入我们的方法,从而有可能解决大量非混凝土准确和持续放松$\ell_0的处罚功能。此外,我们研究了优化问题的复杂性,展示了如何利用问题的结构来有效地减轻计算负担。最后,数字模拟显示了我们方法在全球最佳性和信号重建两方面的好处。