Litcius/Paper detail

Wassmap: Wasserstein Isometric Mapping for Image Manifold Learning

Keaton Hamm, Nick Henscheid, Shujie Kang

2023SIAM Journal on Mathematics of Data Science17 citationsDOIOpen Access PDF

Abstract

.In this paper, we propose Wasserstein Isometric Mapping (Wassmap), a nonlinear dimensionality reduction technique that provides solutions to some drawbacks in existing global nonlinear dimensionality reduction algorithms in imaging applications. Wassmap represents images via probability measures in Wasserstein space, then uses pairwise Wasserstein distances between the associated measures to produce a low-dimensional, approximately isometric embedding. We show that the algorithm is able to exactly recover parameters of some image manifolds, including those generated by translations or dilations of a fixed generating measure. Additionally, we show that a discrete version of the algorithm retrieves parameters from manifolds generated from discrete measures by providing a theoretical bridge to transfer recovery results from functional data to discrete data. Testing of the proposed algorithms on various image data manifolds shows that Wassmap yields good embeddings compared with other global and local techniques.Keywordsmanifold learningnonlinear dimensionality reductionoptimal transportWasserstein spaceIsomapMSC codes68T1049Q22

Topics & Concepts

Nonlinear dimensionality reductionDimensionality reductionEmbeddingMathematicsManifold (fluid mechanics)Pairwise comparisonMeasure (data warehouse)Curse of dimensionalityImage (mathematics)Nonlinear systemComputer scienceAlgorithmArtificial intelligenceData miningPhysicsEngineeringMechanical engineeringQuantum mechanicsTopological and Geometric Data AnalysisMedical Image Segmentation TechniquesAdvanced Image Processing Techniques