Indexed by:Journal paper
First Author:Wang,Xinggang
Correspondence Author:Feng,Bin
Co-author:Latecki,Jan,Longin,Liu,Wenyu,Bai,Xiang
Journal:Pattern Recognition
DOI number:10.1016/j.patcog.2013.12.008
Date of Publication:2014-01-03
Impact Factor:7.196
Abstract:Shape representation is a fundamental problem in computer vision. Current approaches to shape representation mainly focus on designing low-level shape descriptors which are robust to rotation, scaling and deformation of shapes. In this paper, we focus on mid-level modeling of shape representation. We develop a new shape representation called Bag of Contour Fragments (BCF) inspired by classical Bag of Words (BoW) model. In BCF, a shape is decomposed into contour fragments each of which is then individually described using a shape descriptor, e.g., the Shape Context descriptor, and encoded into a shape code. Finally, a compact shape representation is built by pooling shape codes in the shape. Shape classification with BCF only requires an efficient linear SVM classifier. In our experiments, we fully study the characteristics of BCF, show that BCF achieves the state-of-the-art performance on several well-known shape benchmarks, and can be applied to real image classification problem. HighlightsA new shape representation is proposed by encoding contour fragments in shape.The proposed shape representation is compact yet informative.The proposed shape representation is robust to shape deformation and conclusion.We obtain the state-of-the-art shape classification performance on several bench-mark datasets.