Publication | Closed Access
Principal manifolds and probabilistic subspaces for visual recognition
295
Citations
48
References
2002
Year
Face DetectionFacial Recognition SystemMachine VisionImage AnalysisData ScienceMachine LearningPattern RecognitionNonlinear Principal ManifoldsEngineeringManifold LearningManifold ModelingComputer ScienceIndependent Component AnalysisPrincipal Component AnalysisNonlinear Dimensionality ReductionPrincipal ManifoldsComputer Vision
Investigates the use of linear and nonlinear principal manifolds for learning low-dimensional representations for visual recognition. Several leading techniques - principal component analysis (PCA), independent component analysis (ICA) and nonlinear kernel PCA (KPCA) - are examined and tested in a visual recognition experiment using 1,800+ facial images from the "FERET" (FacE REcognition Technology) database. We compare the recognition performance of nearest-neighbor matching with each principal manifold representation to that of a maximum a-posteriori (MAP) matching rule using a Bayesian similarity measure derived from dual probabilistic subspaces. The experimental results demonstrate the simplicity, computational economy and performance superiority of the Bayesian subspace method over principal manifold techniques for visual matching.
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