Abstract—In this paper we address the task of accurately re-constructing a distributed signal through the collection of a small number of samples at a data gathering point using Compressive Sensing (CS) in conjunction with Principal Component Analysis (PCA). Our scheme compresses in a distributed way real world non-stationary signals, recovering them at the data collection point through the online estimation of their spatial/temporal correlation structures. The proposed technique is hereby char-acterized under the framework of Bayesian estimation, showing under which assumptions it is equivalent to optimal maximum a posteriori (MAP) recovery. As the main contribution of this paper, we proceed with the analysis of data collected by our indoo...
Compressive sensing (CS) is a new paradigm in signal processing and sampling theory. In this chapter...
This thesis deals with an emerging area of signal processing, called Compressive Sensing (CS), that ...
Abstract—We propose a Bayesian based algorithm to recover sparse signals from compressed noisy measu...
In this paper we address the task of accurately reconstructing a distributed signal through the coll...
In this paper, we propose a sparsity model that allows the use of Compressive Sensing (CS) for the o...
We address the problem of compressing large and distributed signals monitored by a Wireless Sensor N...
Abstract—The main contribution of this paper is the imple-mentation and experimental evaluation of a...
The main contribution of this paper is the implementation and experimental evaluation of a signal re...
AbstractCompressive sensing is a new technique utilized for energy efficient data gathering in wirel...
Compressive sensing is a new technique utilized for energy efficient data gathering in wireless sens...
We address the problem of compressing large and distributed signals monitored by a Wireless Sensor N...
Compressive sensing (CS), as a new sensing/sampling paradigm, facilitates signal acquisition by redu...
The theory and application of compressive sensing (CS) have received a lot of interest in recent yea...
This chapter provides the use of Bayesian inference in compressive sensing (CS), a method in signal ...
In-network data aggregation to increase the efficiency of data gathering solutions for Wireless Sens...
Compressive sensing (CS) is a new paradigm in signal processing and sampling theory. In this chapter...
This thesis deals with an emerging area of signal processing, called Compressive Sensing (CS), that ...
Abstract—We propose a Bayesian based algorithm to recover sparse signals from compressed noisy measu...
In this paper we address the task of accurately reconstructing a distributed signal through the coll...
In this paper, we propose a sparsity model that allows the use of Compressive Sensing (CS) for the o...
We address the problem of compressing large and distributed signals monitored by a Wireless Sensor N...
Abstract—The main contribution of this paper is the imple-mentation and experimental evaluation of a...
The main contribution of this paper is the implementation and experimental evaluation of a signal re...
AbstractCompressive sensing is a new technique utilized for energy efficient data gathering in wirel...
Compressive sensing is a new technique utilized for energy efficient data gathering in wireless sens...
We address the problem of compressing large and distributed signals monitored by a Wireless Sensor N...
Compressive sensing (CS), as a new sensing/sampling paradigm, facilitates signal acquisition by redu...
The theory and application of compressive sensing (CS) have received a lot of interest in recent yea...
This chapter provides the use of Bayesian inference in compressive sensing (CS), a method in signal ...
In-network data aggregation to increase the efficiency of data gathering solutions for Wireless Sens...
Compressive sensing (CS) is a new paradigm in signal processing and sampling theory. In this chapter...
This thesis deals with an emerging area of signal processing, called Compressive Sensing (CS), that ...
Abstract—We propose a Bayesian based algorithm to recover sparse signals from compressed noisy measu...