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Beyond Planar Symmetry: Modeling human perception of reflection and rotation symmetries in the wild

Authors :
Yanxi Liu
Christopher Funk
Source :
ICCV
Publication Year :
2017

Abstract

Humans take advantage of real world symmetries for various tasks, yet capturing their superb symmetry perception mechanism with a computational model remains elusive. Motivated by a new study demonstrating the extremely high inter-person accuracy of human perceived symmetries in the wild, we have constructed the first deep-learning neural network for reflection and rotation symmetry detection (Sym-NET), trained on photos from MS-COCO (Microsoft-Common Object in COntext) dataset with nearly 11K consistent symmetry-labels from more than 400 human observers. We employ novel methods to convert discrete human labels into symmetry heatmaps, capture symmetry densely in an image and quantitatively evaluate Sym-NET against multiple existing computer vision algorithms. On CVPR 2013 symmetry competition testsets and unseen MS-COCO photos, Sym-NET significantly outperforms all other competitors. Beyond mathematically well-defined symmetries on a plane, Sym-NET demonstrates abilities to identify viewpoint-varied 3D symmetries, partially occluded symmetrical objects, and symmetries at a semantic level.<br />To appear in the International Conference on Computer Vision (ICCV) 2017

Details

Language :
English
Database :
OpenAIRE
Journal :
ICCV
Accession number :
edsair.doi.dedup.....3d055c28a6aa27f2be0b8c2ec68e5a11