In today's society, we are flooded with massive volumes of data in the order of a billion gigabytes on a daily basis from pervasive sensors. It is becoming increasingly challenging to locally store and transport the acquired data to a central location for signal/data processing (i.e., for inference). To alleviate these problems, it is evident that there is an urgent need to significantly reduce the sensing cost (i.e., the number of expensive sensors) as well as the related memory and bandwidth requirements by developing unconventional sensing mechanisms to extract as much information as possible yet collecting fewer data. The first aim of this thesis is to develop theory and algorithms for data reduction. We develop a data reduction tool ca...
The theoretical problem of finding the solution to an underdeterminedset of linear equations has for...
Abstract—In this paper, we will investigate an adaptive com-pression scheme for tracking time-varyin...
Wireless networks have revolutionized nowadays world by providing real time cost-efficient service a...
In today's society, we are flooded with massive volumes of data in the order of a billion gigabytes ...
Abstract—Wireless sensor networks are often designed to perform two tasks: sensing a physical field ...
An offline sampling design problem for distributed detection is considered in this paper. To reduce ...
An offline sampling design problem for Gaussian detection is con-sidered in this paper. The sensing ...
An offline sampling design problem for Gaussian detection is con-sidered in this paper. The sensing ...
Abstract—We focus on discrete sparse sensing for non-linear parameter estimation with colored Gaussi...
In this paper, sensor network scenarios are considered where the underlying signals of interest exhi...
This paper exploits recent developments in sparse approximation and compressive sensing to efficient...
Thesis (Ph.D.), Electrical Engineering, Washington State UniversityThe two main ideas that are discu...
Abstract—The selection of the minimum number of sensors within a network to satisfy a certain estima...
A central objective in signal processing is to infer meaningful information from a set of measuremen...
This dissertation focuses on the development of theories and practices of energy aware sparse sensin...
The theoretical problem of finding the solution to an underdeterminedset of linear equations has for...
Abstract—In this paper, we will investigate an adaptive com-pression scheme for tracking time-varyin...
Wireless networks have revolutionized nowadays world by providing real time cost-efficient service a...
In today's society, we are flooded with massive volumes of data in the order of a billion gigabytes ...
Abstract—Wireless sensor networks are often designed to perform two tasks: sensing a physical field ...
An offline sampling design problem for distributed detection is considered in this paper. To reduce ...
An offline sampling design problem for Gaussian detection is con-sidered in this paper. The sensing ...
An offline sampling design problem for Gaussian detection is con-sidered in this paper. The sensing ...
Abstract—We focus on discrete sparse sensing for non-linear parameter estimation with colored Gaussi...
In this paper, sensor network scenarios are considered where the underlying signals of interest exhi...
This paper exploits recent developments in sparse approximation and compressive sensing to efficient...
Thesis (Ph.D.), Electrical Engineering, Washington State UniversityThe two main ideas that are discu...
Abstract—The selection of the minimum number of sensors within a network to satisfy a certain estima...
A central objective in signal processing is to infer meaningful information from a set of measuremen...
This dissertation focuses on the development of theories and practices of energy aware sparse sensin...
The theoretical problem of finding the solution to an underdeterminedset of linear equations has for...
Abstract—In this paper, we will investigate an adaptive com-pression scheme for tracking time-varyin...
Wireless networks have revolutionized nowadays world by providing real time cost-efficient service a...