Continuous Generalized Procrustes Analysis - Robotics Institute Carnegie Mellon University

Continuous Generalized Procrustes Analysis

Laura Igual, Xavier Perez Sala, Sergio Escalera, Cecilio Angulo, and Fernando De la Torre
Journal Article, Pattern Recognition, Vol. 47, No. 2, pp. 659 - 671, February, 2014

Abstract

Two-dimensional shape models have been successfully applied to solve many problems in computer vision, such as object tracking, recognition, and segmentation. Typically, 2D shape models are learned from a discrete set of image landmarks (corresponding to projection of 3D points of an object), after applying Generalized Procustes Analysis (GPA) to remove 2D rigid transformations. However, the standard GPA process suffers from three main limitations. Firstly, the 2D training samples do not necessarily cover a uniform sampling of all the 3D transformations of an object. This can bias the estimate of the shape model. Secondly, it can be computationally expensive to learn the shape model by sampling 3D transformations. Thirdly, standard GPA methods use only one reference shape, which can might be insufficient to capture large structural variability of some objects.To address these drawbacks, this paper proposes continuous generalized Procrustes analysis (CGPA). CGPA uses a continuous formulation that avoids the need to generate 2D projections from all the rigid 3D transformations. It builds an efficient (in space and time) non-biased 2D shape model from a set of 3D model of objects. A major challenge in CGPA is the need to integrate over the space of 3D rotations, especially when the rotations are parameterized with Euler angles. To address this problem, we introduce the use of the Haar measure. Finally, we extended CGPA to incorporate several reference shapes. Experimental results on synthetic and real experiments show the benefits of CGPA over GPA. HighlightsContinuous formulation of the generalized Procrustes analysis.CGPA avoids the need to generate 2D projections from all 3D rigid transformations.CGPA builds an efficient non-biased 2D shape model from 3D objects.CGPA uses the Haar measure to integrate over the space of 3D rotations.Experimental results building 2D shape models for different public datasets.

BibTeX

@article{Igual-2014-120726,
author = {Laura Igual and Xavier Perez Sala and Sergio Escalera and Cecilio Angulo and Fernando De la Torre},
title = {Continuous Generalized Procrustes Analysis},
journal = {Pattern Recognition},
year = {2014},
month = {February},
volume = {47},
number = {2},
pages = {659 - 671},
}