We consider a calibration problem, where we determine an unknown sensor location using the known track of a calibration target and a known reference sensor location. We cast the calibration problem as a sparse approximation problem where the unknown sensor location is determined over a discrete spatial grid with respect to the reference sensor. To achieve the calibration objective, low dimensional random projections of the sensor data are passed to the reference sensor, which significantly reduces the inter-sensor communication bandwidth. The unknown sensor location is then determined by solving an l(1)-norm minimization problem (linear program). Field data results are provided to demonstrate the effectiveness of the approach
International audienceWe investigate a compressive sensing framework in which the sensors introduce ...
In this paper, the focus is on the gain and phase calibration of sparse sensor arrays to localize mo...
Compressive sensing is a new technique utilized for energy efficient data gathering in wireless sens...
Joint processing of sensor array outputs improves the performance of parameter estimation and hypoth...
Compressive Sensing (CS) is an emerging area which uses a relatively small number of non-traditional...
This paper exploits recent developments in sparse approximation and compressive sensing to efficient...
International audienceThis paper deals with the sensor placement problem for an array designed for s...
International audienceWe propose a non-parametric technique for source localization with passive sen...
In today's society, we are flooded with massive volumes of data in the order of a billion gigabytes ...
AbstractCompressive sensing is a new technique utilized for energy efficient data gathering in wirel...
We propose an approximation framework for distributed target localization in sensor networks. We rep...
We consider the problem of calibrating a compressed sensing measurement system under the assumption ...
We present a source localization method based upon a sparse representation of sensor measurements wi...
International audienceThis paper deals with the design of sensor arrays in the context involving the...
International audienceWe investigate a compressive sensing framework in which the sensors introduce ...
In this paper, the focus is on the gain and phase calibration of sparse sensor arrays to localize mo...
Compressive sensing is a new technique utilized for energy efficient data gathering in wireless sens...
Joint processing of sensor array outputs improves the performance of parameter estimation and hypoth...
Compressive Sensing (CS) is an emerging area which uses a relatively small number of non-traditional...
This paper exploits recent developments in sparse approximation and compressive sensing to efficient...
International audienceThis paper deals with the sensor placement problem for an array designed for s...
International audienceWe propose a non-parametric technique for source localization with passive sen...
In today's society, we are flooded with massive volumes of data in the order of a billion gigabytes ...
AbstractCompressive sensing is a new technique utilized for energy efficient data gathering in wirel...
We propose an approximation framework for distributed target localization in sensor networks. We rep...
We consider the problem of calibrating a compressed sensing measurement system under the assumption ...
We present a source localization method based upon a sparse representation of sensor measurements wi...
International audienceThis paper deals with the design of sensor arrays in the context involving the...
International audienceWe investigate a compressive sensing framework in which the sensors introduce ...
In this paper, the focus is on the gain and phase calibration of sparse sensor arrays to localize mo...
Compressive sensing is a new technique utilized for energy efficient data gathering in wireless sens...