论文标题
图形上信号恢复的非bayesian估计框架
Non-Bayesian Estimation Framework for Signal Recovery on Graphs
论文作者
论文摘要
图形信号来自物理网络(例如电源和通信系统),或者是由于具有复杂结构(例如社交网络)的数据的方便表示。我们考虑从嘈杂,损坏或不完整的测量以及在结构参数约束(例如图频域中的平滑度)下恢复一般图形信号的问题。在本文中,我们将图形信号恢复作为在加权于点(WMSE)标准下作为非贝尔斯估计问题,该标准基于该图的Laplacian矩阵的二次形式,其跟踪WMSE是估计误差的Dirichlet w.r.r.t. t。图。基于Laplacian的WMSE根据其图谱频谱内容对估计错误进行了惩罚,并且是基于差异的成本函数,该函数说明了以下事实:在许多情况下,只能达到图表上的恢复,只能达到恒定的加成。我们在基于Laplacian的WMSE上开发了一个新的Cramér-Rao Bound(CRB),并介绍了相关的Lehmann无偏见条件W.R.T.图。我们讨论了图形CRB和估计方法的基本问题1)具有相对测量的线性高斯模型;和2)带限制的图形信号恢复。我们开发了基于提议的图形CRB的这些问题,以优化网络中的传感器位置的采样分配策略。在随机图和电网数据上的数值模拟用于验证图CRB和采样策略的性能。
Graph signals arise from physical networks, such as power and communication systems, or as a result of a convenient representation of data with complex structure, such as social networks. We consider the problem of general graph signal recovery from noisy, corrupted, or incomplete measurements and under structural parametric constraints, such as smoothness in the graph frequency domain. In this paper, we formulate the graph signal recovery as a non-Bayesian estimation problem under a weighted mean-squared-error (WMSE) criterion, which is based on a quadratic form of the Laplacian matrix of the graph and its trace WMSE is the Dirichlet energy of the estimation error w.r.t. the graph. The Laplacian-based WMSE penalizes estimation errors according to their graph spectral content and is a difference-based cost function which accounts for the fact that in many cases signal recovery on graphs can only be achieved up to a constant addend. We develop a new Cramér-Rao bound (CRB) on the Laplacian-based WMSE and present the associated Lehmann unbiasedness condition w.r.t. the graph. We discuss the graph CRB and estimation methods for the fundamental problems of 1) A linear Gaussian model with relative measurements; and 2) Bandlimited graph signal recovery. We develop sampling allocation policies that optimize sensor locations in a network for these problems based on the proposed graph CRB. Numerical simulations on random graphs and on electrical network data are used to validate the performance of the graph CRB and sampling policies.