We compare and contrast from a geometric perspective a number of low-dimensional signal models that support stable information-preserving dimensionality reduction. We consider sparse and compressible signal models for deterministic and random signals, structured sparse and compressible signal models, point clouds, and manifold signal models. Each model has a particular geometrical structure that enables signal information in to be stably preserved via a simple linear and nonadaptive projection to a much lower dimensional space whose dimension either is independent of the ambient dimension at best or grows logarithmically with it at worst. As a bonus, we point out a common misconception related to probabilistic compressible signal models, th...
A host of problems involve the recovery of structured signals from a dimensionality reduced represen...
ℓ_1 minimization is often used for recovering sparse signals from an under-determined linear system...
The last decade witnessed the burgeoning development in the reconstruction of signals by exploiting ...
Models in signal processing often deal with some notion of structure or conciseness suggesting that ...
Journal PaperMany types of data and information can be described by concise models that suggest each...
The object of this thesis is the study of constrained measurement systems of signals having low-dime...
Conference PaperRandom projections have recently found a surprising niche in signal processing. The ...
Traditional signal processing systems, based on linear modeling principles, face a stifling pressure...
Compressive sensing (CS) is an alternative to Shannon/Nyquist sampling for acquisition of sparse or ...
Abstract—Many applications have benefited remarkably from low-dimensional models in the recent decad...
Compressive sensing is an emerging field predicated upon the fact that, if a signal has a sparse rep...
Many applications have benefited remarkably from low-dimensional models in the recent decade. The fa...
International audienceIn many linear inverse problems, we want to estimate an unknown vector belongi...
This thesis is motivated by the perspective of connecting compressed sensing and machine learning, a...
Abstract — Lower dimensional signal representation schemes frequently assume that the signal of inte...
A host of problems involve the recovery of structured signals from a dimensionality reduced represen...
ℓ_1 minimization is often used for recovering sparse signals from an under-determined linear system...
The last decade witnessed the burgeoning development in the reconstruction of signals by exploiting ...
Models in signal processing often deal with some notion of structure or conciseness suggesting that ...
Journal PaperMany types of data and information can be described by concise models that suggest each...
The object of this thesis is the study of constrained measurement systems of signals having low-dime...
Conference PaperRandom projections have recently found a surprising niche in signal processing. The ...
Traditional signal processing systems, based on linear modeling principles, face a stifling pressure...
Compressive sensing (CS) is an alternative to Shannon/Nyquist sampling for acquisition of sparse or ...
Abstract—Many applications have benefited remarkably from low-dimensional models in the recent decad...
Compressive sensing is an emerging field predicated upon the fact that, if a signal has a sparse rep...
Many applications have benefited remarkably from low-dimensional models in the recent decade. The fa...
International audienceIn many linear inverse problems, we want to estimate an unknown vector belongi...
This thesis is motivated by the perspective of connecting compressed sensing and machine learning, a...
Abstract — Lower dimensional signal representation schemes frequently assume that the signal of inte...
A host of problems involve the recovery of structured signals from a dimensionality reduced represen...
ℓ_1 minimization is often used for recovering sparse signals from an under-determined linear system...
The last decade witnessed the burgeoning development in the reconstruction of signals by exploiting ...