This paper investigates recovery of an undamped spectrally sparse signal and its spectral components from a set of regularly spaced samples within the framework of spectral compressed sensing and super-resolution. We show that the existing Hankel-based optimization methods suffer from the fundamental limitation that the prior of undampedness cannot be exploited. We propose a new low rank optimization model partially inspired by forward-backward processing for line spectral estimation and show its capability in restricting the spectral poles on the unit circle. We present convex relaxation approaches with the model and show their provable accuracy and robustness to bounded and sparse noise. All our results are generalized from the 1-D to arbitrary-dimensional spectral compressed sensing. Numerical simulations are provided that corroborate our analysis and show efficiency of our model and advantageous performance of our approach in improved accuracy and resolution as compared to the state-of-the-art Hankel and atomic norm methods.
翻译:本文调查了在光谱压缩感测和超分辨率框架内从一组定期间隔样本中回收的未加标记的光谱稀少信号及其光谱组件的情况。我们表明,基于汉克勒的现有优化方法受到根本的限制,即无法利用以前未加标记的优化方法。我们提出了一个新的低级优化模型,部分受线光谱估计前向后处理的启发,并展示了它限制单位圆上光谱极的能力。我们提出了与模型的共振放松方法,并展示了它们对于被捆绑和稀散的噪音的可证实的准确性和稳健性。我们的所有结果都从1D到任意的光谱压缩遥感。提供了数字模拟,以证实我们的分析,并展示了我们模型的效率,以及我们方法在提高精度和分辨率方面,相对于最先进的汉克勒法和原子规范方法而言的有利性表现。