Unsupervised data labeling on graphs by self-assignment flows

This paper extends the recently introduced assignment flow approach for supervised image labeling to unsupervised scenarios where no labels are given. The resulting self-assignment flow takes a pairwise data affinity matrix as input data and maximizes the correlation with a low-rank matrix that is p...

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Bibliographic Details
Main Authors: Zisler, Matthias (Author) , Zern, Artjom (Author) , Boll, Bastian (Author) , Petra, Stefania (Author) , Schnörr, Christoph (Author)
Format: Article (Journal)
Language:English
Published: 2021
In: Proceedings in applied mathematics and mechanics
Year: 2021, Volume: 20, Issue: 1, Pages: 1-2
ISSN:1617-7061
DOI:10.1002/pamm.202000156
Online Access:Verlag, kostenfrei, Volltext: https://doi.org/10.1002/pamm.202000156
Verlag, kostenfrei, Volltext: https://onlinelibrary.wiley.com/doi/abs/10.1002/pamm.202000156
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Author Notes:Matthias Zisler, Artjom Zern, Bastian Boll, Stefania Petra, and Christoph Schnörr
Description
Summary:This paper extends the recently introduced assignment flow approach for supervised image labeling to unsupervised scenarios where no labels are given. The resulting self-assignment flow takes a pairwise data affinity matrix as input data and maximizes the correlation with a low-rank matrix that is parametrized by the variables of the assignment flow, which entails an assignment of the data to themselves through the formation of latent labels (feature prototypes). A single user parameter, the neighborhood size for the geometric regularization of assignments, drives the entire process. By smooth geodesic interpolation between different normalizations of self-assignment matrices on the positive definite matrix manifold, a one-parameter family of self-assignment flows is defined. Accordingly, our approach can be characterized from different viewpoints, e.g. as performing spatially regularized, rank-constrained discrete optimal transport, or as computing spatially regularized normalized spectral cuts. Regarding combinatorial optimization, our approach successfully determines completely positive factorizations of self-assignments in large-scale scenarios, subject to spatial regularization. Various experiments including the unsupervised learning of patch dictionaries using a locally invariant distance function, illustrate the properties of the approach.
Item Description:First published: 25 January 2021
Gesehen am 18.09.2021
Physical Description:Online Resource
ISSN:1617-7061
DOI:10.1002/pamm.202000156