For low-power wireless systems, transmission data volume is a key property, which influences the energy cost and time delay of transmission. In this paper, we introduce compressive sensing to propose a compressed sampling and collaborative reconstruction framework, which enables real-time direction of arrival estimation for wireless sensor array network. In sampling part, random compressed sampling and 1-bit sampling are utilized to reduce sample data volume while making little extra requirement for hardware. In reconstruction part, collaborative reconstruction method is proposed by exploiting similar sparsity structure of acoustic signal from nodes in the same array. Simulation results show that proposed framework can reach similar perform...
Compressive Sampling (CS) is a powerful sampling technique that allows accurately reconstructing a c...
In wireless sensor nodes with a tight power budget, minimizing both the amount of transmitted data a...
We address the problem of compressing large and distributed signals monitored by a Wireless Sensor N...
A compressive sensing joint sparse representation direction of arrival estimation (CSJSR-DoA) approa...
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...
The main contribution of this paper is the implementation and experimental evaluation of a signal re...
Abstract—The main contribution of this paper is the imple-mentation and experimental evaluation of a...
Abstract Sparsity is an attribute present in a myriad of natural signals and systems, occurring eit...
This paper considers sparsity-aware adaptive compressed sensing acquisition and the joint reconstruc...
We address the problem of compressing large and distributed signals monitored by a Wireless Sensor N...
A wireless sensor network monitors the environment at a macroscopic level. It comprises interconnect...
The emerging compressed sensing (CS) theory can significantly reduce the number of sampling points t...
Compressive sensing (CS) is a new technology in digital signal processing capable of high-resolution...
The development of compressive sensing (CS) technology has inspired data gathering in wireless senso...
Compressive Sampling (CS) is a powerful sampling technique that allows accurately reconstructing a c...
In wireless sensor nodes with a tight power budget, minimizing both the amount of transmitted data a...
We address the problem of compressing large and distributed signals monitored by a Wireless Sensor N...
A compressive sensing joint sparse representation direction of arrival estimation (CSJSR-DoA) approa...
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...
The main contribution of this paper is the implementation and experimental evaluation of a signal re...
Abstract—The main contribution of this paper is the imple-mentation and experimental evaluation of a...
Abstract Sparsity is an attribute present in a myriad of natural signals and systems, occurring eit...
This paper considers sparsity-aware adaptive compressed sensing acquisition and the joint reconstruc...
We address the problem of compressing large and distributed signals monitored by a Wireless Sensor N...
A wireless sensor network monitors the environment at a macroscopic level. It comprises interconnect...
The emerging compressed sensing (CS) theory can significantly reduce the number of sampling points t...
Compressive sensing (CS) is a new technology in digital signal processing capable of high-resolution...
The development of compressive sensing (CS) technology has inspired data gathering in wireless senso...
Compressive Sampling (CS) is a powerful sampling technique that allows accurately reconstructing a c...
In wireless sensor nodes with a tight power budget, minimizing both the amount of transmitted data a...
We address the problem of compressing large and distributed signals monitored by a Wireless Sensor N...