Title :
Symmetry detection via contour grouping
Author :
Yansheng Ming ; Hongdong Li ; Xuming He
Abstract :
This paper presents a simple but effective model for detecting the symmetric axes of bilaterally symmetric objects in unsegmented natural scene images. Our model constructs a directed graph of symmetry interaction. Every node in the graph represents a matched pair of features, and every directed edge represents the interaction between nodes. The bilateral symmetry detection problem is then formulated as finding the star subgraph with maximal weight. The star structure ensures the consistency between grouped nodes while the optimal star subgraph can be found in polynomial time. Our model makes prediction based on contour cue: each node in the graph represents a pair of edge segments. Compared with the Loy and Eklundh´s method which used SIFT feature, our model can often produce better results for the images containing limited texture. This advantage is demonstrated on two natural scene image sets.
Keywords :
computational complexity; directed graphs; image texture; object detection; Loy-Eklundh method; SIFT feature; bilateral symmetry detection problem; contour cue; contour grouping; directed graph; edge segments; graph edge; graph node; image texture; polynomial time; scale-invariant feature transform; star subgraph; symmetric axis detection; symmetry interaction; unsegmented natural scene images; contour; symmetry detection;
Conference_Titel :
Image Processing (ICIP), 2013 20th IEEE International Conference on
Conference_Location :
Melbourne, VIC
DOI :
10.1109/ICIP.2013.6738877