International audienceIn this paper, we present a novel generalization of the graph Fourier transform (GFT). Our approach is based on separately considering the definitions of signal energy and signal variation, leading to several possible orthonormal GFTs. Our approach includes traditional definitions of the GFT as special cases, while also leading to new GFT designs that are better at taking into account the irregular nature of the graph. As an illustration, in the context of sensor networks we use the Voronoi cell area of vertices in our GFT definition, showing that it leads to a more sensible definition of graph signal energy even when sampling is highly irregular
National audienceWe propose a generalization of the graph Fourier transform to arbitrary Hilbert spa...
In recent years ,there has been a lot of data being collected from diverse sources like temperature ...
This article proposes the augmentation of the adjacency model of networks for graph signal processin...
International audienceRecent progress in graph signal processing (GSP) has addressed a number of pro...
International audienceIn the past few years, Graph Signal Processing (GSP) has attracted a lot of in...
Graph-structured data appears in many modern applications like social networks, sensor networks, tra...
The legacy of Joseph Fourier in science is vast, especially thanks to the essential tool that the Fo...
The analysis of signals defined over a graph is relevant in many applications, such as social and ec...
Abstract—In applications such as social, energy, transporta-tion, sensor, and neuronal networks, hig...
To analyze and synthesize signals on networks or graphs, Fourier theory has been extended to irregul...
A key tool to analyze signals defined over a graph is the so called Graph Fourier Transform (GFT). A...
One of the key challenges in the area of signal processing on graphs is to design dictionaries and t...
Thesis (Ph. D.)--University of Rochester. Department of Electrical and Computer Engineering, 2020.Ne...
Contemporary data is often supported by an irregular structure, which can be conveniently captured b...
This article proposes the augmentation of the adjacency model of networks for graph signal processin...
National audienceWe propose a generalization of the graph Fourier transform to arbitrary Hilbert spa...
In recent years ,there has been a lot of data being collected from diverse sources like temperature ...
This article proposes the augmentation of the adjacency model of networks for graph signal processin...
International audienceRecent progress in graph signal processing (GSP) has addressed a number of pro...
International audienceIn the past few years, Graph Signal Processing (GSP) has attracted a lot of in...
Graph-structured data appears in many modern applications like social networks, sensor networks, tra...
The legacy of Joseph Fourier in science is vast, especially thanks to the essential tool that the Fo...
The analysis of signals defined over a graph is relevant in many applications, such as social and ec...
Abstract—In applications such as social, energy, transporta-tion, sensor, and neuronal networks, hig...
To analyze and synthesize signals on networks or graphs, Fourier theory has been extended to irregul...
A key tool to analyze signals defined over a graph is the so called Graph Fourier Transform (GFT). A...
One of the key challenges in the area of signal processing on graphs is to design dictionaries and t...
Thesis (Ph. D.)--University of Rochester. Department of Electrical and Computer Engineering, 2020.Ne...
Contemporary data is often supported by an irregular structure, which can be conveniently captured b...
This article proposes the augmentation of the adjacency model of networks for graph signal processin...
National audienceWe propose a generalization of the graph Fourier transform to arbitrary Hilbert spa...
In recent years ,there has been a lot of data being collected from diverse sources like temperature ...
This article proposes the augmentation of the adjacency model of networks for graph signal processin...