TA6a4: Compressive Sensing and Imaging
Tue, 31 Oct, 08:15 - 09:55 PT (UTC -8)
Location: Kiln
Session Type: Poster
Track: Adaptive Systems, Machine Learning, Data Analytics

TA6a4.1: Partitioned Convolutional Dictionary Learning over Imbalanced Subspaces

Michael A. Culp, Naval Air Warfare Center Weapons Division, United States

TA6a4.2: Quadrature-Based Compressive Sensing Guarantees for Bounded Orthonormal Systems

Marc Valdez, Colorado School of Mines, United States; Jacob Rezac, National Institute of Standards and Technology, United States; Michael Wakin, Colorado School of Mines, United States

TA6a4.3: Constrained Independent Vector Analysis with References: Algorithms and Performance Evaluation

Trung Vu, Francisco Laport, Hanlu Yang, Tulay Adali, University of Maryland, Baltimore County, United States

TA6a4.4: Stochastic Natural Thresholding Algorithms

Rachel Grotheer, Wofford College, United States; Shuang Li, University of California, Los Angeles, United States; Anna Ma, University of California, Irvine, United States; Deanna Needell, University of California, Los Angeles, United States; Jing Qin, University of Kentucky, United States

TA6a4.5: Solving Inverse Problems with Score-Based Generative Priors learned from Noisy Data

Asad Aali, Marius Arvinte, Sidharth Kumar, Jonathan Tamir, The University of Texas at Austin, United States