CVLGOCNov 15, 2023

Unsupervised approaches based on optimal transport and convex analysis for inverse problems in imaging

arXiv:2311.08972v25 citationsh-index: 16
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive survey of theoretically principled unsupervised learning schemes for imaging inverse problems, which is incremental as it reviews existing methods rather than introducing new ones.

This paper reviews unsupervised deep learning methods for imaging inverse problems, focusing on approaches based on optimal transport and convex analysis, and surveys key mathematical results and provably convergent algorithms.

Unsupervised deep learning approaches have recently become one of the crucial research areas in imaging owing to their ability to learn expressive and powerful reconstruction operators even when paired high-quality training data is scarcely available. In this chapter, we review theoretically principled unsupervised learning schemes for solving imaging inverse problems, with a particular focus on methods rooted in optimal transport and convex analysis. We begin by reviewing the optimal transport-based unsupervised approaches such as the cycle-consistency-based models and learned adversarial regularization methods, which have clear probabilistic interpretations. Subsequently, we give an overview of a recent line of works on provably convergent learned optimization algorithms applied to accelerate the solution of imaging inverse problems, alongside their dedicated unsupervised training schemes. We also survey a number of provably convergent plug-and-play algorithms (based on gradient-step deep denoisers), which are among the most important and widely applied unsupervised approaches for imaging problems. At the end of this survey, we provide an overview of a few related unsupervised learning frameworks that complement our focused schemes. Together with a detailed survey, we provide an overview of the key mathematical results that underlie the methods reviewed in the chapter to keep our discussion self-contained.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes