Notice
Topic:
Enhancement of ICA Representation for Face Recognition
Doctor Student: Jiajin Lei
Advisors: Dr. Chao Lu
(Department of Computer and
Information Sciences, Towson University)
Dr. Victor Chen
(Naval Research Lab)
Time: Dec. 1, Tuesday 3-4 pm
Location:
COSC dept Conference room YR459
ABSTRACT
Face
recognition found a large number of applications. Independent Component
Analysis (ICA) has successfully been used in this area. Compared to other
“traditional” methods in face recognition, ICA is relatively new, and its many
aspects need to be further investigated. In this dissertation, we explored the
methods to enhance ICA face representation for improvement of face recognition performance,
mainly by using spatiotemporal ICA (stICA). stICA joints face information from
both space domain and time domain. This strategy leads to enhancement of ICA
representation for face recognition with respect to spatial ICA (sICA) where only still face information is used.
The
first part of the dissertation briefly reviews and outlines the status of face
recognition and its main algorithms. Although face recognition includes broad
spectrum of algorithms, here we mainly focused on statistic methods, such as
PCA (Principal Component Analysis), ICA, and LDA (Linear Discriminant
Analysis). Especially the origin, purpose, definition and principle of ICA were
detailed described.
The
second part of the dissertation deals with spatial ICA and spatiotemporal ICA
for face recognition. By using one well known face database and ourselves-built
face database we investigated the intrinsic difference and performances of ICA
architecture I and ICA architecture II, showed the advantages of ICA over PCA
in face recognition. Result indicates while ICA architecture Ι focuses on
face local feature, ICA architecture II is more sensitive to face global
feature. In the mean time we also explored the methods for ICA feature
enhancement by importing algorithms of ICA Subspace Selection and Sequential
Forward Floating Selection. In this part model of spatiotemporal ICA was set up
and explained. Then the advantage of stICA over sICA was experimentally justified.
In the
following part, an algorithm for locating special facial components was
reported. With the availability of this algorithm, we investigated localized
spatiotemporal ICA representation. By localized, we mean faces are patched for
special facial portions. Localized spatiotemporal ICA representation can
extract unique face features. Although ICA derives many face representations,
no one alone fully satisfies our final goal. To further enhance the
performance, we proposed Optimizing-Selection-Fusion method. This method
selects most discriminant features from different ICA
representations, meanwhile the numbers of features
from different feature sets are optimized. Our method greatly improves the
recognition performance with recognition rate being as high as 94.62%.