复杂连续稀疏建模的多参数优化方法

É. Chouzenoux, J. Pesquet, A. Florescu
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引用次数: 5

摘要

这项工作的主要焦点是一个复值信号的估计,假设在不可数信号字典中具有稀疏表示。字典元素由实值向量参数化,可用的观测值被加性噪声破坏。采用线性化技术,将原模型重铸为约束稀疏摄动模型。从非凸优化的观点出发,解决了多参数的计算问题。定义了一个代价函数,其中包括考虑噪声统计量的任意Lipschitz可微数据保真度项和一个类似于0的惩罚。然后采用一种近似算法来解决由此产生的非凸非光滑最小化问题。实验结果表明,该方法在二维光谱分析中具有良好的实用性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multi-parameter optimization approach for complex continuous sparse modelling
The main focus of this work is the estimation of a complex valued signal assumed to have a sparse representation in an uncountable dictionary of signals. The dictionary elements are parameterized by a real-valued vector and the available observations are corrupted with an additive noise. By applying a linearization technique, the original model is recast as a constrained sparse perturbed model. The problem of the computation of the involved multiple parameters is addressed from a nonconvex optimization viewpoint. A cost function is defined including an arbitrary Lipschitz differentiable data fidelity term accounting for the noise statistics, and an ℓ0-like penalty. A proximal algorithm is then employed to solve the resulting nonconvex and nonsmooth minimization problem. Experimental results illustrate the good practical performance of the proposed approach when applied to 2D spectrum analysis.
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