The problem of the distributed recovery of jointly sparse signals has attracted much attention recently. Let us assume that the nodes of a network observe different sparse signals with common support; starting from linear, compressed measurements, and exploiting network communication, each node aims at reconstructing the support and the non-zero values of its observed signal. In the literature, distributed greedy algorithms have been proposed to tackle this problem, among which the most reliable ones require a large amount of transmitted data, which barely adapts to realistic network communication constraints. In this work, we address the problem through a reweighted l1 soft thresholding technique, in which the threshold is iteratively tun...
For compressed sensing with jointly sparse signals, we present a new signal model and two new joint ...
Compressive sensing (CS) is an alternative to Shannon/Nyquist sampling for acquiring sparse or compr...
In this paper, we tackle the in-network recovery of sparse signals with innovations. We assume that ...
The problem of the distributed recovery of jointly sparse signals has attracted much attention recen...
The problem of the distributed recovery of jointly sparse signals has attracted much attention recen...
We propose a new class of distributed algorithms for the in-network reconstruction of jointly sparse...
Abstract—In this paper, we address the problem of distributed sparse recovery of signals acquired vi...
In this paper, we tackle the in-network recovery of sparse signals with innovations. We assume that ...
Recently, distributed algorithms have been proposed for the recovery of sparse signals in networked ...
A set of vectors (or signals) are jointly sparse if their nonzero entries are commonly supported on ...
This paper considers sparsity-aware adaptive compressed sensing acquisition and the joint reconstruc...
Compressed sensing is an emerging field based on the revelation that a small collection of linear pr...
Compressed sensing is a thriving research field covering a class of problems where a large sparse si...
Distributed optimization in multi-agent systems under sparsity constraints has recently received a l...
Conference PaperCompressed sensing is an emerging field based on the revelation that a small collect...
For compressed sensing with jointly sparse signals, we present a new signal model and two new joint ...
Compressive sensing (CS) is an alternative to Shannon/Nyquist sampling for acquiring sparse or compr...
In this paper, we tackle the in-network recovery of sparse signals with innovations. We assume that ...
The problem of the distributed recovery of jointly sparse signals has attracted much attention recen...
The problem of the distributed recovery of jointly sparse signals has attracted much attention recen...
We propose a new class of distributed algorithms for the in-network reconstruction of jointly sparse...
Abstract—In this paper, we address the problem of distributed sparse recovery of signals acquired vi...
In this paper, we tackle the in-network recovery of sparse signals with innovations. We assume that ...
Recently, distributed algorithms have been proposed for the recovery of sparse signals in networked ...
A set of vectors (or signals) are jointly sparse if their nonzero entries are commonly supported on ...
This paper considers sparsity-aware adaptive compressed sensing acquisition and the joint reconstruc...
Compressed sensing is an emerging field based on the revelation that a small collection of linear pr...
Compressed sensing is a thriving research field covering a class of problems where a large sparse si...
Distributed optimization in multi-agent systems under sparsity constraints has recently received a l...
Conference PaperCompressed sensing is an emerging field based on the revelation that a small collect...
For compressed sensing with jointly sparse signals, we present a new signal model and two new joint ...
Compressive sensing (CS) is an alternative to Shannon/Nyquist sampling for acquiring sparse or compr...
In this paper, we tackle the in-network recovery of sparse signals with innovations. We assume that ...