Abstract:
3D face recognition has made considerable progress during the last decade as an
emerging biometric modality. In order to ensure reliable 3D face recognition, novel
3D alignment and recognition algorithms are proposed in this research work. The
principal objective of this dissertation is to investigate and introduce novel techniques
to construct a fully automatic 3D facial recognition system.
The first study presents a novel, pose and expression invariant approach for 3D face
alignment based on intrinsic coordinate system (ICS) characterized by nose tip,
horizontal nose plane and vertical symmetry plane of the face. It is observed that
distance of nose tip from 3D scanner is reduced after pose correction which is
presented as a quantifying heuristic for the proposed alignment scheme. In addition,
motivated by the fact that a single classifier cannot be generally efficient against all
face regions, a two tier ensemble classifier based 3D face recognition approach is
presented which employs Principal Component Analysis (PCA) for feature extraction.
The individual regions are classified using Mahalanobis Cosine (MahCos) distance,
Euclidean distance, Mahalanobis (Mah) distance, and Manhattan distance in separate
experiments. The resulting matching scores are combined using weighted Borda
Count (WBC) based combination and a re-ranking stage. The performance of the
proposed approach is corroborated by extensive experiments performed on two
databases, namely, FRGC v2.0 and GavabDB, confirming effectiveness of fusion
strategies to improve performance. In the second study, a novel and fully automatic pose and expression invariant 3D
face recognition algorithm is proposed using two-pass 3D face alignment based on
minimum distance and two-pass 3D face alignment based on classification approach.
The proposed alignment approaches are capable of aligning neutral and expressive 3D
faces acquired at frontal and non-frontal poses whereas the former is capable of
aligning profile face images as well. For the face recognition framework, multi-view
3D faces are synthesized to exploit real 3D facial information. The matching scores
are computed between multi-view face images using Mahalanobis Cosine (MahCos) distance, Euclidean distance, Mahalanobis (Mah) distance and Manhattan distance in
separate experiments. Inspired by the effectiveness of fusion approaches, Support
Vector Machine (SVM) is employed using scores obtained from multi-view face pairs
for face verification. In addition, a three stage unified classifier based face
identification algorithm is employed which combines results from seven base
classifiers at first stage, two parallel face recognition algorithms at second stage and
an exponential rank combiner at third stage in a hierarchical manner.
For profile face images, the face identification algorithm combines results using four
base classifiers, two parallel face recognition algorithms and the rank combiner stage.
The performance of the proposed methodology is demonstrated by extensive
experiments performed on two databases: FRGC v2.0 and GavabDB. The results
show that the proposed methodology can be efficiently used to construct a pose and
expression invariant facial recognition system.