Memory-based Face Recognition for Visitor Identification
Terence Sim, Rahul Sukthankar, Matthew Mullin, Shumeet Baluja
Abstract
We show that a simple, memory-based technique for appearance-based
face recognition, motivated by the real-world task of visitor
identification, can outperform more sophisticated algorithms
that use Principal Components Analysis (PCA) and neural networks.
This technique is closely related to correlation templates; however,
we show that the use of novel similarity measures greatly improves
performance. We also show that augmenting the memory base with
additional, synthetic face images results in further improvements in
performance. Results of extensive empirical testing on two standard
face recognition datasets are presented, and direct comparisons
with published work show that our algorithm achieves comparable (or
superior) results. Our system is incorporated into an automated
visitor identification system that has been operating successfully in
an outdoor environment since January 1999.