Learning Differential Invariants of Planar Curves

03/06/2023
by   Roy Velich, et al.
0

We propose a learning paradigm for the numerical approximation of differential invariants of planar curves. Deep neural-networks' (DNNs) universal approximation properties are utilized to estimate geometric measures. The proposed framework is shown to be a preferable alternative to axiomatic constructions. Specifically, we show that DNNs can learn to overcome instabilities and sampling artifacts and produce consistent signatures for curves subject to a given group of transformations in the plane. We compare the proposed schemes to alternative state-of-the-art axiomatic constructions of differential invariants. We evaluate our models qualitatively and quantitatively and propose a benchmark dataset to evaluate approximation models of differential invariants of planar curves.

READ FULL TEXT

page 7

page 8

page 9

page 11

research
02/11/2022

Deep Signatures – Learning Invariants of Planar Curves

We propose a learning paradigm for numerical approximation of differenti...
research
10/11/2021

Using differential invariants to detect projective equivalences and symmetries of rational 3D curves

We present a new approach using differential invariants to detect projec...
research
02/03/2021

Length Learning for Planar Euclidean Curves

In this work, we used deep neural networks (DNNs) to solve a fundamental...
research
11/23/2016

Learning Invariant Representations Of Planar Curves

We propose a metric learning framework for the construction of invariant...
research
05/13/2011

Planar Pixelations and Image Recognition

Any subset of the plane can be approximated by a set of square pixels. T...
research
04/17/2018

Freeness and invariants of rational plane curves

Given a parameterization ϕ of a rational plane curve C, we study some in...
research
12/11/2022

Isometrically deformable cones and cylinders carrying planar curves

We study cones and cylinders with a 1-parametric isometric deformation c...

Please sign up or login with your details

Forgot password? Click here to reset