International audienceIrregularly sampling a spatially stationary random field does not yield a graph stationary signal in general. Based on this observation, we build a definition of graph stationarity based on intrinsic stationarity, a less restrictive definition of classical stationarity. We introduce the concept of graph variogram, a novel tool for measuring spatial intrinsic stationarity at local and global scales for irregularly sampled signals by selecting subgraphs of local neighborhoods. Graph variograms are extensions of variograms used for signals defined on continuous Euclidean space. Our experiments with intrinsically stationary signals sampled on a graph, demonstrate that graph variograms yield estimates with small bias of tru...
The empirical variogram is a standard tool in the investigation and modelling of spatial covariance...
Discrete spatial structures are ubiquitous in statistical analysis. They can take the form of images...
We propose a novel time shift like operator called the graph translation. We enforce that it is isom...
International audienceIrregularly sampling a spatially stationary random field does not yield a grap...
International audienceIn this paper, we look at one of the most crucial ingredient to graph signal p...
Graphs are a central tool in machine learning and information processing as they allow to convenient...
Graphs permit the analysis of the relationships in complex data sets effectively. Stationarity is a ...
Stationarity is a cornerstone property that facilitates the analysis and processing of random signal...
International audienceIn this paper, we extend the recent definition of graph stationarity into a de...
International audienceIn this communication, we extend the concept of stationary temporal signals to...
We develop lagged Metropolis-Hastings walk for sampling from simple undirected graphs according to g...
A novel scheme for sampling graph signals is proposed. Space-shift sampling can be understood as a h...
Geostatistical analysis of spatial random functions frequently uses sample variograms computed from ...
With the explosive growth of information and communication, data is being generated at an unpreceden...
National audienceBased on a real geographical dataset, we apply the stationarity characterisation of...
The empirical variogram is a standard tool in the investigation and modelling of spatial covariance...
Discrete spatial structures are ubiquitous in statistical analysis. They can take the form of images...
We propose a novel time shift like operator called the graph translation. We enforce that it is isom...
International audienceIrregularly sampling a spatially stationary random field does not yield a grap...
International audienceIn this paper, we look at one of the most crucial ingredient to graph signal p...
Graphs are a central tool in machine learning and information processing as they allow to convenient...
Graphs permit the analysis of the relationships in complex data sets effectively. Stationarity is a ...
Stationarity is a cornerstone property that facilitates the analysis and processing of random signal...
International audienceIn this paper, we extend the recent definition of graph stationarity into a de...
International audienceIn this communication, we extend the concept of stationary temporal signals to...
We develop lagged Metropolis-Hastings walk for sampling from simple undirected graphs according to g...
A novel scheme for sampling graph signals is proposed. Space-shift sampling can be understood as a h...
Geostatistical analysis of spatial random functions frequently uses sample variograms computed from ...
With the explosive growth of information and communication, data is being generated at an unpreceden...
National audienceBased on a real geographical dataset, we apply the stationarity characterisation of...
The empirical variogram is a standard tool in the investigation and modelling of spatial covariance...
Discrete spatial structures are ubiquitous in statistical analysis. They can take the form of images...
We propose a novel time shift like operator called the graph translation. We enforce that it is isom...