Title of article :
Background Learning for Robust Face Recognition With PCA in the Presence of Clutter
Author/Authors :
A. N. Rajagopalan، نويسنده , , R. Chellappa، نويسنده , , and N. T. Koterba، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
We propose a new method within the framework of
principal component analysis (PCA) to robustly recognize faces in
the presence of clutter. The traditional eigenface recognition (EFR)
method, which is based on PCA, works quite well when the input
test patterns are faces. However, when confronted with the more
general task of recognizing faces appearing against a background,
the performance of the EFR method can be quite poor. It may miss
faces completely or may wrongly associate many of the background
image patterns to faces in the training set. In order to improve
performance in the presence of background, we argue in favor of
learning the distribution of background patterns and show how
this can be done for a given test image. An eigenbackground space
is constructed corresponding to the given test image and this space
in conjunction with the eigenface space is used to impart robustness.
A suitable classifier is derived to distinguish nonface patterns
from faces. When tested on images depicting face recognition in
real situations against cluttered background, the performance of
the proposed method is quite good with fewer false alarms.
Keywords :
principal component analysis (PCA). , clutter , Eigenface , eigenbackground , Fisher’slinear discriminant (FLD)
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING