Polynomial graph filters and their inverses play important roles in graph signal processing. An advantage of polynomial graph filters is that they can be implemented in a distributed manner, which involves data transmission between adjacent vertices only. The challenge arisen in the inverse filtering is that a direct implementation may suffer from high computational burden, as the inverse graph filter usually has full bandwidth even if the original filter has small bandwidth. In this paper, we consider distributed implementation of the inverse filtering procedure for a polynomial graph filter of multiple shifts, and we propose two iterative approximation algorithms that can be implemented in a distributed network, where each vertex is equipped with systems for limited data storage, computation power and data exchanging facility to its adjacent vertices. We also demonstrate the effectiveness of the proposed iterative approximation algorithms to implement the inverse filtering procedure and their satisfactory performance to denoise time-varying graph signals and a data set of US hourly temperature at 218 locations.
翻译:多元图形过滤器及其反面在图形信号处理中起着重要作用。 多元图形过滤器的一个优点是,它们能够以分布式的方式实施, 包括仅在相邻的脊椎之间传输数据。 逆向过滤器产生的挑战是, 直接实施可能会受到高计算负担的影响, 因为反向图形过滤器通常拥有全带宽, 即使原始过滤器带宽较小。 在本文中, 我们考虑对多班的多元图像过滤器实施反过滤程序, 并且我们提议两种迭代近似算法, 可以在分布式网络中实施, 每个顶端都配有有限的数据存储、 计算能力和数据交换设施系统, 用于相邻的脊椎。 我们还展示了拟议迭代近似算法的有效性, 以实施反向过滤程序, 以及它们对于隐化时间变换的图形信号和在218个地点的美国时温数据集的满意性能。