Sampling of graph signals with successive local aggregations
Antonio G. Marques, Santiago Segarra, Geert Leus, Alejandro Ribeiro

TL;DR
This paper introduces a novel graph signal sampling method using successive local aggregations at a single node, enabling efficient recovery of signals with sparse frequency representations, applicable to various graph structures including directed cycles.
Contribution
The proposed sampling scheme uniquely uses sequential local aggregations at one node, extending classical time-domain sampling to general graphs with theoretical guarantees.
Findings
Vandermonde structure of the sampling matrix is preserved for general graphs.
Sampling and interpolation are effective both with and without noise.
Numerical experiments validate the approach on synthetic and real-world data.
Abstract
A new scheme to sample signals defined in the nodes of a graph is proposed. The underlying assumption is that such signals admit a sparse representation in a frequency domain related to the structure of the graph, which is captured by the so-called graph-shift operator. Most of the works that have looked at this problem have focused on using the value of the signal observed at a subset of nodes to recover the signal in the entire graph. Differently, the sampling scheme proposed here uses as input observations taken at a single node. The observations correspond to sequential applications of the graph-shift operator, which are linear combinations of the information gathered by the neighbors of the node. When the graph corresponds to a directed cycle (which is the support of time-varying signals), our method is equivalent to the classical sampling in the time domain. When the graph is more…
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