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Differential topology / Multivariate statistics / Dimension reduction / Computational statistics / Geometric topology / Nonlinear dimensionality reduction / Manifold / Differentiable manifold / Lipschitz continuity / Topology / Statistics / Mathematics
Differential topology
Multivariate statistics
Dimension reduction
Computational statistics
Geometric topology
Nonlinear dimensionality reduction
Manifold
Differentiable manifold
Lipschitz continuity
Topology
Statistics
Mathematics

Manifold of Facial Expression Ya Chang, Changbo Hu, Matthew Turk Computer Science Department, University of California, Santa Barbara, CA 93106 {yachang, cbhu, mturk}@cs.ucsb.edu Abstract

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