University of Texas at Austin

Past Event: Oden Institute Seminar

Off-the-grid Recovery of Piecewise Constant Images from Few Fourier Samples

Greg Ongie, University of Iowa

1:30 – 3PM
Thursday Mar 31, 2016

POB 6.304

Abstract

In many practical imaging scenarios, including computed tomography and magnetic resonance imaging (MRI), the goal is to reconstruct an image from few of its Fourier domain samples. Many state-of-the-art reconstruction techniques, such as total variation minimization, focus on discrete "on-the-grid" modelling of the problem both in spatial domain and Fourier domain. While such discrete-to-discrete models allow for fast algorithms, they can also result in sub-optimal sampling rates and reconstruction artifacts due to model mismatch. Instead, I present a framework that allows for the recovery of a continuous domain "off-the-grid" representation of piecewise constant images from the optimal number of Fourier samples. The main idea is to model the edge set of the image as the level-set curve of a continuous domain band-limited function. Sampling guarantees can be derived for this framework by investigating the algebraic geometry of these curves. Finally, I show how this model can be put into a robust and efficient optimization framework by posing signal recovery entirely in Fourier domain as a structured low-rank matrix completion problem, and demonstrate the benefits of this approach over standard discrete methods in the context of undersampled MRI reconstruction.

Event information

Date
1:30 – 3PM
Thursday Mar 31, 2016
Location POB 6.304
Hosted by Rachel Ward