Graph sampling strategies require the signal to be relatively sparse in an alternative domain, e.g. bandlimitedness for reconstructing the signal. When such a condition is violated or its approximation demands a large bandwidth, the reconstruction often comes with unsatisfactory results even with large samples. In this paper, we propose an alternative sampling strategy based on a type of overcomplete graph-based dictionary. The dictionary is built from graph filters and has demonstrated excellent sparse representations for graph signals. We recognize the proposed sampling problem as a coupling between support recovery of sparse signals and node selection. Thus, to approach the problem we propose a sampling procedure that alternates between ...
A novel scheme for sampling graph signals is proposed. Space-shift sampling can be understood as a h...
We investigate a scalable M-channel critically sampled filter bank for graph signals, where each of ...
This thesis consists of two parts in both data science and signal processing over graphs. In the fir...
In sparse signal representation, the choice of a dictionary often involves a tradeoff between two de...
Multiscale analysis of signals on graphs often involves the downsampling of a graph. In this paper, ...
We propose a sampling theory for signals that are supported on either directed or undirected graphs....
International audienceWe study the problem of sampling k-bandlimited signals on graphs. We propose t...
With the explosive growth of information and communication, data is being generated at an unpreceden...
Abstract—We propose a sampling theory for signals that are supported on either directed or undirecte...
In sparse signal representation, the choice of a dictionary often involves a tradeoff between two de...
We study signal recovery on graphs based on two sampling strategies: random sampling and experimenta...
We propose a method for learning dictionaries towards sparse ap-proximation of signals defined on ve...
We consider the problem of sampling from data defined on the nodes of a weighted graph, where the ed...
With the objective of employing graphs toward a more generalized theory of signal processing, we pre...
In this paper the focus is on sampling and reconstruction of signals supported on nodes of arbitrary...
A novel scheme for sampling graph signals is proposed. Space-shift sampling can be understood as a h...
We investigate a scalable M-channel critically sampled filter bank for graph signals, where each of ...
This thesis consists of two parts in both data science and signal processing over graphs. In the fir...
In sparse signal representation, the choice of a dictionary often involves a tradeoff between two de...
Multiscale analysis of signals on graphs often involves the downsampling of a graph. In this paper, ...
We propose a sampling theory for signals that are supported on either directed or undirected graphs....
International audienceWe study the problem of sampling k-bandlimited signals on graphs. We propose t...
With the explosive growth of information and communication, data is being generated at an unpreceden...
Abstract—We propose a sampling theory for signals that are supported on either directed or undirecte...
In sparse signal representation, the choice of a dictionary often involves a tradeoff between two de...
We study signal recovery on graphs based on two sampling strategies: random sampling and experimenta...
We propose a method for learning dictionaries towards sparse ap-proximation of signals defined on ve...
We consider the problem of sampling from data defined on the nodes of a weighted graph, where the ed...
With the objective of employing graphs toward a more generalized theory of signal processing, we pre...
In this paper the focus is on sampling and reconstruction of signals supported on nodes of arbitrary...
A novel scheme for sampling graph signals is proposed. Space-shift sampling can be understood as a h...
We investigate a scalable M-channel critically sampled filter bank for graph signals, where each of ...
This thesis consists of two parts in both data science and signal processing over graphs. In the fir...