FACE RECOGNITION USING LAPLACIAN
FACES
ABSTRACT
We propose an appearance-based face
recognition method called the Laplacianface approach. By using Locality
Preserving Projections (LPP), the face images are mapped into a face subspace
for analysis.
Different
from Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA)
which effectively see only the Euclidean structure of face space, LPP finds an
embedding that preserves local information, and obtains a face subspace that
best detects the essential face manifold structure.
The
Laplacianfaces are the optimal linear approximations to the Eigen functions of
the Laplace Beltrami operator on the face manifold. In this way, the unwanted
variations resulting from changes in lighting, facial expression, and pose may
be eliminated or reduced.
Theoretical analysis shows that PCA, LDA, and LPP can
obtained from different graph models. We compare the proposed Laplacianface
approach with Eigenface and Fisher face methods on three different face data
sets. Experimental
results suggest that the proposed Laplacianface approach provides a better
representation and achieves lower error rates in face recognition.
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