Learning Adaptive Regularization for Image Labeling Using Geometric Assignment

10/22/2019
by   Ruben Hühnerbein, et al.
14

We study the inverse problem of model parameter learning for pixelwise image labeling, using the linear assignment flow and training data with ground truth. This is accomplished by a Riemannian gradient flow on the manifold of parameters that determine the regularization properties of the assignment flow. Using the symplectic partitioned Runge–Kutta method for numerical integration, it is shown that deriving the sensitivity conditions of the parameter learning problem and its discretization commute. A convenient property of our approach is that learning is based on exact inference. Carefully designed experiments demonstrate the performance of our approach, the expressiveness of the mathematical model as well as its limitations, from the viewpoint of statistical learning and optimal control.

READ FULL TEXT

page 20

page 21

page 22

page 24

page 25

page 26

page 27

page 28

research
08/02/2021

Learning Linearized Assignment Flows for Image Labeling

We introduce a novel algorithm for estimating optimal parameters of line...
research
05/09/2022

A Nonlocal Graph-PDE and Higher-Order Geometric Integration for Image Labeling

This paper introduces a novel nonlocal partial difference equation (PDE)...
research
10/04/2017

Image Labeling Based on Graphical Models Using Wasserstein Messages and Geometric Assignment

We introduce a novel approach to Maximum A Posteriori inference based on...
research
11/08/2019

Self-Assignment Flows for Unsupervised Data Labeling on Graphs

This paper extends the recently introduced assignment flow approach for ...
research
04/24/2019

Unsupervised Assignment Flow: Label Learning on Feature Manifolds by Spatially Regularized Geometric Assignment

This paper introduces the unsupervised assignment flow that couples the ...
research
03/16/2016

Image Labeling by Assignment

We introduce a novel geometric approach to the image labeling problem. A...
research
10/16/2019

Continuous-Domain Assignment Flows

Assignment flows denote a class of dynamical models for contextual data ...

Please sign up or login with your details

Forgot password? Click here to reset