Uncertainty principles present an important theoretical tool in signal processing, as they provide limits on the time-frequency concentration of a signal. In many real-world applications the signal domain has a complicated irregular structure that can be described by a graph. In this paper, we focus on the global uncertainty principle on graphs and propose new connections between the uncertainty bound for graph signals and graph eigenvectors delocalization. We also derive uncertainty bounds for random $d$-regular graphs and provide numerically efficient upper and lower approximations for the uncertainty bound on an arbitrary graph
The subject of analytical uncertainty principles is an important field within harmonic analysis, qua...
The goal of this paper is to review the main trends in the domain of uncertainty principles and loca...
<p>This thesis addresses statistical estimation and testing of signals over a graph when measurement...
Uncertainty principles present an important theoretical tool in signal processing, as they provide l...
International audienceSignal processing on graphs is a recent research domain that aims at generaliz...
Analysis of signals defined over graphs has been of interest in the recent years. In this regard, ma...
International audienceThe uncertainty principle states that a signal cannot be localized both in tim...
International audienceGraph Signal Processing (GSP) is a mathematical framework that aims at extendi...
This paper advances a new way to formulate the uncertainty principle for graphs, by using a non-loca...
We present a flexible framework for uncertainty principles in spectral graph theory. In this framewo...
In many applications of current interest, the observations are represented as a signal defined over ...
Modern datasets are often massive due to the sharp decrease in the cost of collecting and storing da...
In order to analyze signals defined over graphs, many concepts from the classical signal processing ...
The subject of analytical uncertainty principles is an important field within harmonic analysis, qua...
In this paper we address the problem of analyzing signals defined over graphs whose topology is know...
The subject of analytical uncertainty principles is an important field within harmonic analysis, qua...
The goal of this paper is to review the main trends in the domain of uncertainty principles and loca...
<p>This thesis addresses statistical estimation and testing of signals over a graph when measurement...
Uncertainty principles present an important theoretical tool in signal processing, as they provide l...
International audienceSignal processing on graphs is a recent research domain that aims at generaliz...
Analysis of signals defined over graphs has been of interest in the recent years. In this regard, ma...
International audienceThe uncertainty principle states that a signal cannot be localized both in tim...
International audienceGraph Signal Processing (GSP) is a mathematical framework that aims at extendi...
This paper advances a new way to formulate the uncertainty principle for graphs, by using a non-loca...
We present a flexible framework for uncertainty principles in spectral graph theory. In this framewo...
In many applications of current interest, the observations are represented as a signal defined over ...
Modern datasets are often massive due to the sharp decrease in the cost of collecting and storing da...
In order to analyze signals defined over graphs, many concepts from the classical signal processing ...
The subject of analytical uncertainty principles is an important field within harmonic analysis, qua...
In this paper we address the problem of analyzing signals defined over graphs whose topology is know...
The subject of analytical uncertainty principles is an important field within harmonic analysis, qua...
The goal of this paper is to review the main trends in the domain of uncertainty principles and loca...
<p>This thesis addresses statistical estimation and testing of signals over a graph when measurement...