Sparse recovery is a powerful tool that plays a central role in many applications, including source estimation in radio astronomy, direction of arrival estimation in acoustics or radar, super-resolution microscopy, and X-ray crystallography. Conventional approaches usually resort to discretization, where the sparse signals are estimated on a pre-defined grid. However, sparse signals do not line up conveniently on any grid in reality. While the discrete setup usually leads to a simple optimization problem that can be solved with standard tools, there are two noticeable drawbacks: (i) Because of the model mismatch, the effective noise level is increased; (ii) The minimum reachable resolution is limited by the grid step-size. Because of the li...
Estimating unknown signals from parameterized measurement models is a common problem that arises in ...
This dissertation focuses on information recovery under two general types of sensing constraints and...
The new generation of radio interferometer instruments, such as LOFAR and SKA, will allow us to buil...
Context. Two main classes of imaging algorithms have emerged in radio interferometry: the CLEAN algo...
University of Minnesota Ph.D. dissertation. May 2017. Major: Electrical/Computer Engineering. Adviso...
Context. Two main classes of imaging algorithms have emerged in radio interferometry: the CLEAN algo...
Popular transforms, like the discrete cosine transform or the wavelet transform, owe their success t...
PhDThe significance of sparse representations has been highlighted in numerous signal processing ap...
A central objective in signal processing is to infer meaningful information from a set of measuremen...
International audienceContext. The LOw Frequency ARray (LOFAR) radio telescope is a giant digital ph...
In recent works, sparse models and convex optimization techniques have been applied to radio-interfe...
Accurate signal recovery or image reconstruction from indirect and possibly undersampled data is a t...
Estimating Diracs in continuous two or higher dimensions is a fundamental problem in imaging. Previo...
Low dimensional signal processing has drawn an increasingly broad amount of attention in the past de...
In recent years, signal processing has come under mounting pressure to accommodate the increasingly ...
Estimating unknown signals from parameterized measurement models is a common problem that arises in ...
This dissertation focuses on information recovery under two general types of sensing constraints and...
The new generation of radio interferometer instruments, such as LOFAR and SKA, will allow us to buil...
Context. Two main classes of imaging algorithms have emerged in radio interferometry: the CLEAN algo...
University of Minnesota Ph.D. dissertation. May 2017. Major: Electrical/Computer Engineering. Adviso...
Context. Two main classes of imaging algorithms have emerged in radio interferometry: the CLEAN algo...
Popular transforms, like the discrete cosine transform or the wavelet transform, owe their success t...
PhDThe significance of sparse representations has been highlighted in numerous signal processing ap...
A central objective in signal processing is to infer meaningful information from a set of measuremen...
International audienceContext. The LOw Frequency ARray (LOFAR) radio telescope is a giant digital ph...
In recent works, sparse models and convex optimization techniques have been applied to radio-interfe...
Accurate signal recovery or image reconstruction from indirect and possibly undersampled data is a t...
Estimating Diracs in continuous two or higher dimensions is a fundamental problem in imaging. Previo...
Low dimensional signal processing has drawn an increasingly broad amount of attention in the past de...
In recent years, signal processing has come under mounting pressure to accommodate the increasingly ...
Estimating unknown signals from parameterized measurement models is a common problem that arises in ...
This dissertation focuses on information recovery under two general types of sensing constraints and...
The new generation of radio interferometer instruments, such as LOFAR and SKA, will allow us to buil...