Vector-valued Graph Signal Processing (2505.22325v1)
Abstract: Classical graph signal processing (GSP) introduces methodologies for analyzing real or complex signals defined on graph domains, moving beyond classical uniform sampling techniques, such as the graph discrete Fourier transform (GDFT), employed as a pivotal tool for transforming graph signals into their spectral representation, enabling effective signal processing techniques such as filtering and denoising. In this paper, we propose a possible generalization of the set of signals and we study some properties of the more general set of vector-valued signals, which take values into any Banach space, and some properties of the fundamental operators of vertex-frequency analysis acting on these signals, such as the Fourier transform, the convolution operator and the translation operator. In particular, we show some estimates involving their operator norm as linear operators between Banach spaces and we establish a graph version of the classical primary uncertainty principle. We also show how these estimates depend on the choice of an orthonormal basis of $\mathbb{K}N$. The importance of considering this general set of signals derives from the possibility to study multiple signals at the same time and the correlation existing between them, since multiple scalar signals can be modelled as a unique vector-valued signal.
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