Short and Straight: Geodesics on Differentiable Manifolds

05/24/2023
by   Daniel Kelshaw, et al.
0

Manifolds discovered by machine learning models provide a compact representation of the underlying data. Geodesics on these manifolds define locally length-minimising curves and provide a notion of distance, which are key for reduced-order modelling, statistical inference, and interpolation. In this work, we first analyse existing methods for computing length-minimising geodesics. We find that these are not suitable for obtaining valid paths, and thus, geodesic distances. We remedy these shortcomings by leveraging numerical tools from differential geometry, which provide the means to obtain Hamiltonian-conserving geodesics. Second, we propose a model-based parameterisation for distance fields and geodesic flows on continuous manifolds. Our approach exploits a manifold-aware extension to the Eikonal equation, eliminating the need for approximations or discretisation. Finally, we develop a curvature-based training mechanism, sampling and scaling points in regions of the manifold exhibiting larger values of the Ricci scalar. This sampling and scaling approach ensures that we capture regions of the manifold subject to higher degrees of geodesic deviation. Our proposed methods provide principled means to compute valid geodesics and geodesic distances on manifolds. This work opens opportunities for latent-space interpolation, optimal control, and distance computation on differentiable manifolds.

READ FULL TEXT
research
09/09/2023

Gromov-Hausdorff Distances for Comparing Product Manifolds of Model Spaces

Recent studies propose enhancing machine learning models by aligning the...
research
09/09/2023

Neural Latent Geometry Search: Product Manifold Inference via Gromov-Hausdorff-Informed Bayesian Optimization

Recent research indicates that the performance of machine learning model...
research
07/05/2019

Generalization of the Neville-Aitken Interpolation Algorithm on Grassmann Manifolds : Applications to Reduced Order Model

The interpolation on Grassmann manifolds in the framework of parametric ...
research
11/16/2017

Parametric Manifold Learning Via Sparse Multidimensional Scaling

We propose a metric-learning framework for computing distance-preserving...
research
08/29/2022

Affective Manifolds: Modeling Machine's Mind to Like, Dislike, Enjoy, Suffer, Worry, Fear, and Feel Like A Human

After the development of different machine learning and manifold learnin...
research
07/11/2021

Building Three-Dimensional Differentiable Manifolds Numerically

A method is developed here for building differentiable three-dimensional...
research
09/05/2012

Learning Manifolds with K-Means and K-Flats

We study the problem of estimating a manifold from random samples. In pa...

Please sign up or login with your details

Forgot password? Click here to reset