This paper proposes convolutional filtering for data whose structure can be modeled by a simplicial complex (SC). SCs are mathematical tools that not only capture pairwise relationships as graphs but account also for higher-order network structures. These filters are built by following the shift-and-sum principle of the convolution operation and rely on the Hodge-Laplacians to shift the signal within the simplex. But since in SCs we have also inter-simplex coupling, we use the incidence matrices to transfer the signal in adjacent simplices and build a filter bank to jointly filter signals from different levels. We prove some interesting properties for the proposed filter bank, including permutation and orientation equivariance, a computational complexity that is linear in the SC dimension, and a spectral interpretation using the simplicial Fourier transform. We illustrate the proposed approach with numerical experiments.
翻译:本文建议对结构可以通过简化复合体(SC)建模的数据进行革命过滤。 SC是数学工具,不仅作为图表捕捉双向关系,而且考虑到较高顺序网络结构。 这些过滤器是遵循组合操作的转换和总和原则建立的,并依靠Hodge-Laplaceians在简单轴内转换信号。 但是,由于在SCs中,我们也有简单联动,因此我们使用事件矩阵将相邻的简化体中的信号传输出去,并建立一个过滤库,从不同级别联合过滤信号。我们对拟议的过滤库有一些有趣的特性,包括变换和定向等同性,一种在SC维度上是线性的计算复杂性,以及使用简化式四面形变换的光谱解释。我们用数字实验来说明拟议的方法。