Using Machine Learning to Detect Rotational Symmetries from Reflectional Symmetries in 2D Images

01/17/2022
by   Koen Ponse, et al.
12

Automated symmetry detection is still a difficult task in 2021. However, it has applications in computer vision, and it also plays an important part in understanding art. This paper focuses on aiding the latter by comparing different state-of-the-art automated symmetry detection algorithms. For one of such algorithms aimed at reflectional symmetries, we propose post-processing improvements to find localised symmetries in images, improve the selection of detected symmetries and identify another symmetry type (rotational). In order to detect rotational symmetries, we contribute a machine learning model which detects rotational symmetries based on provided reflection symmetry axis pairs. We demonstrate and analyze the performance of the extended algorithm to detect localised symmetries and the machine learning model to classify rotational symmetries.

READ FULL TEXT

page 1

page 2

page 3

page 4

page 5

page 6

page 7

page 8

research
05/23/2018

SymmSLIC: Symmetry Aware Superpixel Segmentation and its Applications

Over-segmentation of an image into superpixels has become a useful tool ...
research
06/15/2023

Hands-on detection for steering wheels with neural networks

In this paper the concept of a machine learning based hands-on detection...
research
05/30/2017

Reflection Invariant and Symmetry Detection

Symmetry detection and discrimination are of fundamental meaning in scie...
research
06/27/2017

Approximate Reflection Symmetry in a Point Set: Theory and Algorithm with an Application

We propose an algorithm to detect approximate reflection symmetry presen...
research
11/18/2016

Finding Mirror Symmetry via Registration

Symmetry is prevalent in nature and a common theme in man-made designs. ...
research
07/01/2019

Symmetry Detection and Classification in Drawings of Graphs

Symmetry is a key feature observed in nature (from flowers and leaves, t...

Please sign up or login with your details

Forgot password? Click here to reset