Growing Gaussian mixture models for pose invariant face recognition - Robotics Institute Carnegie Mellon University

Growing Gaussian mixture models for pose invariant face recognition

Ralph Gross, Jie Yang, and Alex Waibel
Conference Paper, Proceedings of 15th International Conference on Pattern Recognition (ICPR '00), Vol. 1, pp. 1088 - 1091, September, 2000

Abstract

A major challenge for face recognition algorithms lies in the variance faces undergo while changing pose. This problem is typically addressed by building view dependent models based on face images taken from predefined head poses. However, it is impossible to determine all head poses beforehand in an unrestricted setting such as a meeting room, where people can move and interact freely. We present an approach to pose invariant face recognition. We employ Gaussian mixture models to characterize human faces and model pose variance with different numbers of mixture components. The optimal number of mixture components for each person is automatically learned from training data by growing the mixture models. The proposed algorithm is tested on real data recorded in a meeting room. The experimental results indicate that the new method outperforms standard eigenface and Gaussian mixture model approaches. Our algorithm achieved as much as 42% error reduction compared to the standard eigenface approach on the same test data.

BibTeX

@conference{Gross-2000-8114,
author = {Ralph Gross and Jie Yang and Alex Waibel},
title = {Growing Gaussian mixture models for pose invariant face recognition},
booktitle = {Proceedings of 15th International Conference on Pattern Recognition (ICPR '00)},
year = {2000},
month = {September},
volume = {1},
pages = {1088 - 1091},
}