Least-Squares Congealing for Large Numbers of Images - Robotics Institute Carnegie Mellon University

Least-Squares Congealing for Large Numbers of Images

Mark Cox, Simon Lucey, Sridha Sridharan, and Jeffrey Cohn
Conference Paper, Proceedings of (ICCV) International Conference on Computer Vision, pp. 1949 - 1956, September, 2009

Abstract

In this paper we pursue the task of aligning an ensemble of images in an unsupervised manner. This task has been commonly referred to as “congealing” in literature. A form of congealing, using a least-squares criteria, has been recently demonstrated to have desirable properties over conventional congealing. Least-squares congealing can be viewed as an extension of the Lucas & Kanade (LK) image alignment algorithm. It is well understood that the alignment performance for the LK algorithm, when aligning a single image with another, is theoretically and empirically equivalent for additive and compositional warps. In this paper we: (i) demonstrate that this equivalence does not hold for the extended case of congealing, (ii) characterize the inherent drawbacks associated with least-squares congealing when dealing with large numbers of images, and (iii) propose a novel method for circumventing these limitations through the application of an inverse-compositional strategy that maintains the attractive properties of the original method while being able to handle very large numbers of images.

BibTeX

@conference{Cox-2009-10296,
author = {Mark Cox and Simon Lucey and Sridha Sridharan and Jeffrey Cohn},
title = {Least-Squares Congealing for Large Numbers of Images},
booktitle = {Proceedings of (ICCV) International Conference on Computer Vision},
year = {2009},
month = {September},
pages = {1949 - 1956},
keywords = {Congealing, Unsupervised Image Ensemble Alignment},
}