论文标题
随机先验下的图形信号采样
Graph Signal Sampling Under Stochastic Priors
论文作者
论文摘要
我们为随机图信号提出了一个广义采样框架。随机图信号的特征是图形宽感性平稳性(GWSS),这是标准时间域信号的广泛感觉平稳性(WSS)的扩展。在本文中,假定图形信号满足GWSS条件,我们研究了它们的采样以及恢复程序。在广义采样中,在采样和重建算子之间插入一个校正过滤器,以补偿非理想测量。我们为校正过滤器提出了一种设计方法,以减少原始图形和重建图信号之间的均方误差(MSE)。我们在两种情况下得出校正过滤器:重建过滤器是任意选择或预定义的。所提出的框架允许任意采样方法,即在顶点或图频域中采样。我们还表明,如果在图频域中执行采样,则最终的校正滤波过滤器的图形响应对于WSS信号的广义采样。此外,我们揭示了所提出的校正过滤器之间的理论联系。通过实验将其MSE与现有方法进行比较,通过实验验证了我们方法的有效性。
We propose a generalized sampling framework for stochastic graph signals. Stochastic graph signals are characterized by graph wide sense stationarity (GWSS) which is an extension of wide sense stationarity (WSS) for standard time-domain signals. In this paper, graph signals are assumed to satisfy the GWSS conditions and we study their sampling as well as recovery procedures. In generalized sampling, a correction filter is inserted between sampling and reconstruction operators to compensate for non-ideal measurements. We propose a design method for the correction filters to reduce the mean-squared error (MSE) between original and reconstructed graph signals. We derive the correction filters for two cases: The reconstruction filter is arbitrarily chosen or predefined. The proposed framework allows for arbitrary sampling methods, i.e., sampling in the vertex or graph frequency domain. We also show that the graph spectral response of the resulting correction filter parallels that for generalized sampling for WSS signals if sampling is performed in the graph frequency domain. Furthermore, we reveal the theoretical connection between the proposed and existing correction filters. The effectiveness of our approach is validated via experiments by comparing its MSE with existing approaches.