论文标题

通过Sobolev平滑度重建时变图形信号

Reconstruction of Time-varying Graph Signals via Sobolev Smoothness

论文作者

Giraldo, Jhony H., Mahmood, Arif, Garcia-Garcia, Belmar, Thanou, Dorina, Bouwmans, Thierry

论文摘要

图形信号处理(GSP)是一个新兴的研究字段,将数字信号处理的概念扩展到图形。 GSP在不同领域(例如传感器网络,机器学习和图像处理)中有许多应用程序。静态图信号的采样和重建在GSP中起着核心作用。但是,许多实际图形信号本质上是时间变化的,此类图信号的时间差异的平滑度可以用作先验的假设。在当前的工作中,我们假设图形信号的时间差异是平滑的,并且我们基于Sobolev平滑度函数的扩展引入了一种新型算法,以重建来自离散样本的时变图形信号。我们通过研究与优化问题相关的黑森的条件数来探索我们随时间变化的图形信号重建的一些理论方面。我们的算法比基于Laplacian操作员的其他方法的收敛速度更快,而无需昂贵的特征值分解或矩阵倒置。提出的GraphTRS在几个数据集上进行了评估,包括两个COVID-19数据集,它的表现优于许多现有的最新方法,用于时变图形信号重建。 GraphTrss还显示了两个环境数据集的出色性能,用于恢复颗粒物和海面温度信号。

Graph Signal Processing (GSP) is an emerging research field that extends the concepts of digital signal processing to graphs. GSP has numerous applications in different areas such as sensor networks, machine learning, and image processing. The sampling and reconstruction of static graph signals have played a central role in GSP. However, many real-world graph signals are inherently time-varying and the smoothness of the temporal differences of such graph signals may be used as a prior assumption. In the current work, we assume that the temporal differences of graph signals are smooth, and we introduce a novel algorithm based on the extension of a Sobolev smoothness function for the reconstruction of time-varying graph signals from discrete samples. We explore some theoretical aspects of the convergence rate of our Time-varying Graph signal Reconstruction via Sobolev Smoothness (GraphTRSS) algorithm by studying the condition number of the Hessian associated with our optimization problem. Our algorithm has the advantage of converging faster than other methods that are based on Laplacian operators without requiring expensive eigenvalue decomposition or matrix inversions. The proposed GraphTRSS is evaluated on several datasets including two COVID-19 datasets and it has outperformed many existing state-of-the-art methods for time-varying graph signal reconstruction. GraphTRSS has also shown excellent performance on two environmental datasets for the recovery of particulate matter and sea surface temperature signals.

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