Length Learning for Planar Euclidean Curves

02/03/2021
by   Barak Or, et al.
8

In this work, we used deep neural networks (DNNs) to solve a fundamental problem in differential geometry. One can find many closed-form expressions for calculating curvature, length, and other geometric properties in the literature. As we know these concepts, we are highly motivated to reconstruct them by using deep neural networks. In this framework, our goal is to learn geometric properties from examples. The simplest geometric object is a curve. Therefore, this work focuses on learning the length of planar sampled curves created by a sine waves dataset. For this reason, the fundamental length axioms were reconstructed using a supervised learning approach. Following these axioms a simplified DNN model, we call ArcLengthNet, was established. The robustness to additive noise and discretization errors were tested.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/06/2023

Learning Differential Invariants of Planar Curves

We propose a learning paradigm for the numerical approximation of differ...
research
02/11/2022

Deep Signatures – Learning Invariants of Planar Curves

We propose a learning paradigm for numerical approximation of differenti...
research
07/21/2021

On the Memorization Properties of Contrastive Learning

Memorization studies of deep neural networks (DNNs) help to understand w...
research
04/04/2021

Fitting Splines to Axonal Arbors Quantifies Relationship between Branch Order and Geometry

Neuromorphology is crucial to identifying neuronal subtypes and understa...
research
03/18/1999

Numerically Invariant Signature Curves

Corrected versions of the numerically invariant expressions for the affi...
research
10/25/2017

Bézier curves that are close to elastica

We study the problem of identifying those cubic Bézier curves that are c...
research
11/23/2016

Learning Invariant Representations Of Planar Curves

We propose a metric learning framework for the construction of invariant...

Please sign up or login with your details

Forgot password? Click here to reset