"From compression to depth: generative compressive sensing and deep greedy unfolding for signal reconstruction"

Simone Brugiapaglia
Department of Mathematics and Statistics,
Concordia University

Wednesday, Feb 4, 2026

Colloquium -  499 DSL Seminar Room
03:30 to 04:30 PM Eastern Time (US and Canada)

In-person attendance is requested.
499 DSL Seminar Room
Zoom access is intended for external (non-departmental) participants only.

Click Here to Join via Zoom

Meeting # 942 7359 5552

Zoom Meeting # 942 7359 5552


Abstract:

Since its inception in the early 2000s, compressive sensing has become a well-established paradigm for efficient signal recovery, with applications ranging from medical imaging to scientific computing. More recently, data-driven reconstruction methods based on deep neural networks have attracted considerable attention and shown great promise as an alternative approach. In this talk, we will review recent progress in signal reconstruction techniques that combine principles from compressive sensing and deep learning. First, we will discuss recent advances in generative compressive sensing, where the traditional sparsity prior is replaced by the assumption that the signal to be reconstructed lies in the range of a deep generative neural network. Second, we will explore deep greedy unfolding, which involves designing deep neural network architectures by "unrolling" the iterations of a sparse recovery algorithm onto the layers of a trainable neural network. In both cases, we will present numerical results in tandem with theoretical guarantees.

Attachments:
FileDescriptionFile size
Download this file (Screenshot 2026-01-28 at 4.21.08 PM.png)Screenshot 2026-01-28 at 4.21.08 PM.pngHeadshot1115 kB
Download this file (Screenshot 2026-01-28 at 3.04.48 PM.png)Screenshot 2026-01-28 at 3.04.48 PM.pngResearch Image916 kB
Dept. of Scientific Computing
Florida State University
400 Dirac Science Library
Tallahassee, FL 32306-4120
admin@sc.fsu.edu
© Scientific Computing, Florida State University
Scientific Computing