Multiple Reflection Symmetry Detection via Linear-Directional Kernel Density Estimation
Abstract
Symmetry is an important composition feature by investigating similar sides inside an image plane. It has a crucial effect to recognize man-made or nature objects within the universe. Recent symmetry detection approaches used a smoothing kernel over different voting maps in the polar coordinate system to detect symmetry peaks, which split the regions of symmetry axis candidates in inefficient way. We propose a reliable voting representation based on weighted linear-directional kernel density estimation, to detect multiple symmetries over challenging real-world and synthetic images. Experimental evaluation on two public datasets demonstrates the superior performance of the proposed algorithm to detect global symmetry axes respect to the major image shapes.
Cite
@article{arxiv.1704.06392,
title = {Multiple Reflection Symmetry Detection via Linear-Directional Kernel Density Estimation},
author = {Mohamed Elawady and Olivier Alata and Christophe Ducottet and Cecile Barat and Philippe Colantoni},
journal= {arXiv preprint arXiv:1704.06392},
year = {2017}
}
Comments
Submitted to CAIP 2017