论文标题
简单卷积过滤器
Simplicial Convolutional Filters
论文作者
论文摘要
我们研究了以简单复合物建模的抽象拓扑空间支持的处理信号的线性过滤器,可以解释为描述节点,边缘,三角形面的图形的概括等。为处理此类信号,我们开发了定义为Matrix Polynomials of Matrix Polynomials of the Simplicial Sigrantal filters。首先,我们研究了这些过滤器的特性,并表明它们是线性和转移不变的,以及置换和定向等效的。这些过滤器也可以以低计算复杂性的分布式方式实现,因为它们仅涉及(多个回合)上层和下部简单之间的简单转移。其次,着眼于边缘流量,我们研究了这些过滤器的频率响应,并研究了如何使用Hodge分类来描述梯度,卷曲和谐波频率。我们讨论了这些频率如何对应于下部和高粘附的耦合以及霍德·拉普拉斯(Hodge Laplacian)的核心,并且可以通过我们的滤波器设计独立调整。第三,我们研究设计简单卷积过滤器并讨论其相对优势的不同程序。最后,我们在几种应用程序中证实了我们的简单过滤器:提取简单信号的不同频率组件,以denoise边缘流量以及分析金融市场和交通网络。
We study linear filters for processing signals supported on abstract topological spaces modeled as simplicial complexes, which may be interpreted as generalizations of graphs that account for nodes, edges, triangular faces etc. To process such signals, we develop simplicial convolutional filters defined as matrix polynomials of the lower and upper Hodge Laplacians. First, we study the properties of these filters and show that they are linear and shift-invariant, as well as permutation and orientation equivariant. These filters can also be implemented in a distributed fashion with a low computational complexity, as they involve only (multiple rounds of) simplicial shifting between upper and lower adjacent simplices. Second, focusing on edge-flows, we study the frequency responses of these filters and examine how we can use the Hodge-decomposition to delineate gradient, curl and harmonic frequencies. We discuss how these frequencies correspond to the lower- and the upper-adjacent couplings and the kernel of the Hodge Laplacian, respectively, and can be tuned independently by our filter designs. Third, we study different procedures for designing simplicial convolutional filters and discuss their relative advantages. Finally, we corroborate our simplicial filters in several applications: to extract different frequency components of a simplicial signal, to denoise edge flows, and to analyze financial markets and traffic networks.