Stationary graph process models are commonly used in the analysis and inference of data sets collected on irregular network topologies. While most of the existing methods represent graph signals with a single stationary process model that is globally valid on the entire graph, in many practical problems, the characteristics of the process may be subject to local variations in different regions of the graph. In this work, we propose a locally stationary graph process (LSGP) model that aims to extend the classical concept of local stationarity to irregular graph domains. We characterize local stationarity by expressing the overall process as the combination of a set of component processes such that the extent to which the process adheres to e...
The article contains an overview over locally stationary processes. At the beginning time varying au...
The necessity to process signals living in non-Euclidean domains, such as signals defined on the top...
In this paper we consider the problem of learning a graph generating process given the evolving grap...
Graphs are a central tool in machine learning and information processing as they allow to convenient...
International audienceMany tools from the field of graph signal processing exploit knowledge of the ...
Stationarity is a cornerstone property that facilitates the analysis and processing of random signal...
International audienceIn this paper, we look at one of the most crucial ingredient to graph signal p...
Graph models provide efficient tools for analyzing data defined over irregular domains such as socia...
A critical challenge in graph signal processing is the sampling of bandlimited graph signals; signal...
In sensor networks, adaptive algorithms such as diffusion adaptation LMS and RLS are commonly used t...
Graphs are a powerful tool for the study of dynamic processes, where a set of interconnected entitie...
With the explosive growth of information and communication, data is being generated at an unpreceden...
Graph filtering is the cornerstone operation in graph signal processing (GSP). Thus, understanding i...
International audienceIn this communication, we extend the concept of stationary temporal signals to...
In applications such as social, energy, transportation, sensor, and neuronal networks, big data natu...
The article contains an overview over locally stationary processes. At the beginning time varying au...
The necessity to process signals living in non-Euclidean domains, such as signals defined on the top...
In this paper we consider the problem of learning a graph generating process given the evolving grap...
Graphs are a central tool in machine learning and information processing as they allow to convenient...
International audienceMany tools from the field of graph signal processing exploit knowledge of the ...
Stationarity is a cornerstone property that facilitates the analysis and processing of random signal...
International audienceIn this paper, we look at one of the most crucial ingredient to graph signal p...
Graph models provide efficient tools for analyzing data defined over irregular domains such as socia...
A critical challenge in graph signal processing is the sampling of bandlimited graph signals; signal...
In sensor networks, adaptive algorithms such as diffusion adaptation LMS and RLS are commonly used t...
Graphs are a powerful tool for the study of dynamic processes, where a set of interconnected entitie...
With the explosive growth of information and communication, data is being generated at an unpreceden...
Graph filtering is the cornerstone operation in graph signal processing (GSP). Thus, understanding i...
International audienceIn this communication, we extend the concept of stationary temporal signals to...
In applications such as social, energy, transportation, sensor, and neuronal networks, big data natu...
The article contains an overview over locally stationary processes. At the beginning time varying au...
The necessity to process signals living in non-Euclidean domains, such as signals defined on the top...
In this paper we consider the problem of learning a graph generating process given the evolving grap...