We consider the problem of classification of a pattern from multiple compressed observations that are collected in a sensor network. In particular, we exploit the properties of random projections in generic sensor devices and we take some first steps in introducing linear dimensionality reduction techniques in the compressed domain. We design a classification framework that consists in embedding the low dimensional classification space given by classical linear dimensionality reduction techniques in the compressed domain. The measurements of the multiple observations are then projected onto the new classification subspace and are finally aggregated in order to reach a classification decision. Simulation results verify the effectiveness of o...
Compressive sampling (CS), also called compressed sensing, entails making observations of an unknown...
This thesis is motivated by the perspective of connecting compressed sensing and machine learning, a...
Compressive sensing is an emerging field predicated upon the fact that, if a signal has a sparse rep...
We propose a framework for exploiting dimension-reducing random projections in detection and classif...
We propose a framework for exploiting dimension-reducing random projections in detection and classif...
This work presents and compare three realistic scenarios to perform near sensor decision making base...
Abstract—The goal of compressive sensing is efficient reconstruction of data from few measurements, ...
International audienceThe unbounded and multidimensional nature, the evolution of data distributions...
Journal PaperMany types of data and information can be described by concise models that suggest each...
Low-dimensional statistics of measurements play an important role in detection problems, including t...
This thesis studies three popular dimension reduction techniques: compressed sensing, random project...
Abstract—There is increasing interest in dimensionality reduction through random projections due in ...
Models in signal processing often deal with some notion of structure or conciseness suggesting that ...
Compressed sensing is an emerging field based on the revelation that a small group of linear project...
The object of this thesis is the study of constrained measurement systems of signals having low-dime...
Compressive sampling (CS), also called compressed sensing, entails making observations of an unknown...
This thesis is motivated by the perspective of connecting compressed sensing and machine learning, a...
Compressive sensing is an emerging field predicated upon the fact that, if a signal has a sparse rep...
We propose a framework for exploiting dimension-reducing random projections in detection and classif...
We propose a framework for exploiting dimension-reducing random projections in detection and classif...
This work presents and compare three realistic scenarios to perform near sensor decision making base...
Abstract—The goal of compressive sensing is efficient reconstruction of data from few measurements, ...
International audienceThe unbounded and multidimensional nature, the evolution of data distributions...
Journal PaperMany types of data and information can be described by concise models that suggest each...
Low-dimensional statistics of measurements play an important role in detection problems, including t...
This thesis studies three popular dimension reduction techniques: compressed sensing, random project...
Abstract—There is increasing interest in dimensionality reduction through random projections due in ...
Models in signal processing often deal with some notion of structure or conciseness suggesting that ...
Compressed sensing is an emerging field based on the revelation that a small group of linear project...
The object of this thesis is the study of constrained measurement systems of signals having low-dime...
Compressive sampling (CS), also called compressed sensing, entails making observations of an unknown...
This thesis is motivated by the perspective of connecting compressed sensing and machine learning, a...
Compressive sensing is an emerging field predicated upon the fact that, if a signal has a sparse rep...