The object of this thesis is the study of constrained measurement systems of signals having low-dimensional structure using analytic tools from Compressed Sensing (CS). Realistic measurement systems usually have architectural constraints that make them differ from their idealized, well-studied counterparts. Nonetheless, these measurement systems can exploit structure in the signals that they measure. Signals considered in this research have low-dimensional structure and can be broken down into two types: static or dynamic. Static signals are either sparse in a specified basis or lying on a low-dimensional manifold (called manifold-modeled signals). Dynamic signals, exemplified as states of a dynamical system, either lie on a low-dimensional...
Compressive sensing (CS) is a new approach to simultaneous sensing and compression that enables a po...
Compressed sensing is a paradigm within signal processing that provides the means for recovering str...
This thesis is motivated by the perspective of connecting compressed sensing and machine learning, a...
Models in signal processing often deal with some notion of structure or conciseness suggesting that ...
We compare and contrast from a geometric perspective a number of low-dimensional signal models that ...
Compressed Sensing concerns a new class of linear data acquisition protocols that are more efficient...
This thesis deals with an emerging area of signal processing, called Compressive Sensing (CS), that ...
Sparsity is a ubiquitous feature of many real world signals such as natural images and neural spikin...
The main focus of this doctoral thesis is to study the problem of robust and scalable data represent...
Abstract. Compressed Sensing (CS) seeks to recover an unknown vector with N entries by making far fe...
Compressed sensing is a novel research area, which was introduced in 2006, and since then has alread...
Compressed sensing (CS) is an emerging field that has attracted considerable research interest over ...
The recently introduced theory of compressed sensing enables the reconstruction of sparse or compre...
Compressed sensing (CS) is a signal acquisition paradigm to simultaneously acquire and reduce dimen...
Compressed Sensing (CS) is an emerging field that enables reconstruction of a sparse signal x ∈...
Compressive sensing (CS) is a new approach to simultaneous sensing and compression that enables a po...
Compressed sensing is a paradigm within signal processing that provides the means for recovering str...
This thesis is motivated by the perspective of connecting compressed sensing and machine learning, a...
Models in signal processing often deal with some notion of structure or conciseness suggesting that ...
We compare and contrast from a geometric perspective a number of low-dimensional signal models that ...
Compressed Sensing concerns a new class of linear data acquisition protocols that are more efficient...
This thesis deals with an emerging area of signal processing, called Compressive Sensing (CS), that ...
Sparsity is a ubiquitous feature of many real world signals such as natural images and neural spikin...
The main focus of this doctoral thesis is to study the problem of robust and scalable data represent...
Abstract. Compressed Sensing (CS) seeks to recover an unknown vector with N entries by making far fe...
Compressed sensing is a novel research area, which was introduced in 2006, and since then has alread...
Compressed sensing (CS) is an emerging field that has attracted considerable research interest over ...
The recently introduced theory of compressed sensing enables the reconstruction of sparse or compre...
Compressed sensing (CS) is a signal acquisition paradigm to simultaneously acquire and reduce dimen...
Compressed Sensing (CS) is an emerging field that enables reconstruction of a sparse signal x ∈...
Compressive sensing (CS) is a new approach to simultaneous sensing and compression that enables a po...
Compressed sensing is a paradigm within signal processing that provides the means for recovering str...
This thesis is motivated by the perspective of connecting compressed sensing and machine learning, a...