Global Optimality in Separable Dictionary Learning with Applications to the Analysis of Diffusion MRI
Evan Schwab, Benjamin D. Haeffele, Ren\'e Vidal, and Nicolas Charon

TL;DR
This paper introduces a framework for guaranteeing global optimality in separable dictionary learning, with applications to jointly learning spatial and angular dictionaries in diffusion MRI data for improved medical imaging analysis.
Contribution
It provides a theoretical and numerical framework for global optimality guarantees in separable dictionary learning, addressing non-convexity issues in multi-dimensional data applications.
Findings
Guarantees of global optimality for separable dictionary learning.
Successful joint learning of spatial and angular dictionaries in diffusion MRI.
Preliminary validation on denoising phantom and real brain dMRI data.
Abstract
Sparse dictionary learning is a popular method for representing signals as linear combinations of a few elements from a dictionary that is learned from the data. In the classical setting, signals are represented as vectors and the dictionary learning problem is posed as a matrix factorization problem where the data matrix is approximately factorized into a dictionary matrix and a sparse matrix of coefficients. However, in many applications in computer vision and medical imaging, signals are better represented as matrices or tensors (e.g. images or videos), where it may be beneficial to exploit the multi-dimensional structure of the data to learn a more compact representation. One such approach is separable dictionary learning, where one learns separate dictionaries for different dimensions of the data. However, typical formulations involve solving a non-convex optimization problem; thus…
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