Time-Frequency Filtering Meets Graph Clustering

Colominas, Marcelo A., Steinerberger, Stefan, Wu, Hau-Tieng

arXiv.org Artificial Intelligence 

We show that the problem of identifying different signal components from a time-frequency representation can be equivalently phrased as a graph clustering problem: given a graph $G=(V,E)$ one aims to identify `clusters', subgraphs that are strongly connected and have relatively few connections between them. The graph clustering problem is well studied, we show how these ideas can suggest (many) new ways to identify signal components. Numerical experiments illustrate the ideas.

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