| Literature DB >> 29269996 |
Zhuowen Tu1, Songfeng Zheng2, Alan Yuille3.
Abstract
In this paper, we present an efficient and robust algorithm for shape matching, registration, and detection. The task is to geometrically transform a source shape to fit a target shape. The measure of similarity is defined in terms of the amount of transformation required. The shapes are represented by sparse-point or continuous-contour representations depending on the form of the data. We formulate the problem as probabilistic inference using a generative model and the EM algorithm. But this algorithm has problems with initialization and computing the E-step. To address these problems, we define a discriminative model which makes use of shape features. This gives a hybrid algorithm which combines the generative and discriminative models. The resulting algorithm is very fast, due to the effectiveness of shape-features for solving correspondence requiring typically only four iterations. The convergence time of the algorithm is under a second. We demonstrate the effectiveness of the algorithm by testing it on standard datasets, such as MPEG7, for shape matching and by applying it to a range of matching, registration, and foreground/background segmentation problems.Keywords: EM; registration; shape context; shape matching; soft assign
Year: 2008 PMID: 29269996 PMCID: PMC5735840 DOI: 10.1016/j.cviu.2007.04.004
Source DB: PubMed Journal: Comput Vis Image Underst ISSN: 1077-3142 Impact factor: 3.876