Ravazzi Chiara, Fosson Sophie, Bianchi Tiziano, Magli Enrico
1National Research Council of Italy, IEIIT-CNR, c/o Politecnico di Torino, Corso Duca degli Abruzzi 24, Torino, 10129 Italy.
2Politecnico di Torino, DAUIN, Corso Duca degli Abruzzi 24, Torino, 10129 Italy.
EURASIP J Adv Signal Process. 2018;2018(1):56. doi: 10.1186/s13634-018-0578-0. Epub 2018 Sep 10.
The aim of this paper is to develop strategies to estimate the sparsity degree of a signal from compressive projections, without the burden of recovery. We consider both the noise-free and the noisy settings, and we show how to extend the proposed framework to the case of non-exactly sparse signals. The proposed method employs -sparsified random matrices and is based on a maximum likelihood (ML) approach, exploiting the property that the acquired measurements are distributed according to a mixture model whose parameters depend on the signal sparsity. In the presence of noise, given the complexity of ML estimation, the probability model is approximated with a two-component Gaussian mixture (2-GMM), which can be easily learned via expectation-maximization. Besides the design of the method, this paper makes two novel contributions. First, in the absence of noise, sufficient conditions on the number of measurements are provided for almost sure exact estimation in different regimes of behavior, defined by the scaling of the measurements sparsity and the signal sparsity. In the presence of noise, our second contribution is to prove that the 2-GMM approximation is accurate in the large system limit for a proper choice of parameter. Simulations validate our predictions and show that the proposed algorithms outperform the state-of-the-art methods for sparsity estimation. Finally, the estimation strategy is applied to non-exactly sparse signals. The results are very encouraging, suggesting further extension to more general frameworks.
本文的目的是制定策略,以便在无需恢复负担的情况下,根据压缩投影估计信号的稀疏度。我们考虑了无噪声和有噪声两种情况,并展示了如何将所提出的框架扩展到非精确稀疏信号的情况。所提出的方法采用 - 稀疏化随机矩阵,并基于最大似然(ML)方法,利用所获取测量值根据混合模型分布这一特性,该混合模型的参数取决于信号稀疏度。在存在噪声的情况下,鉴于ML估计的复杂性,概率模型用双分量高斯混合(2 - GMM)进行近似,它可以通过期望最大化轻松学习。除了方法的设计,本文还做出了两项新颖的贡献。首先,在无噪声的情况下,针对由测量稀疏度和信号稀疏度的缩放定义的不同行为模式下几乎确定的精确估计,给出了测量数量的充分条件。在存在噪声的情况下,我们的第二项贡献是证明对于适当选择的参数,在大系统极限中2 - GMM近似是准确的。仿真验证了我们的预测,并表明所提出的算法在稀疏度估计方面优于现有方法。最后,将估计策略应用于非精确稀疏信号。结果非常令人鼓舞,表明可进一步扩展到更一般的框架。