Publication | Closed Access
A Framework of 2D Fisher Discriminant Analysis: Application to Face Recognition with Small Number of Training Samples
69
Citations
11
References
2005
Year
Unknown Venue
Fisher Discriminant AnalysisEngineeringMachine LearningBiometricsFace RecognitionFeature ExtractionTraining SamplesFace DetectionSmall Sample SizeFacial Recognition SystemImage AnalysisData SciencePattern RecognitionMultilinear Subspace LearningBiostatisticsPrincipal Component AnalysisMachine VisionDeep LearningComputer VisionFacial Expression RecognitionHuman IdentificationPattern Recognition Application
A novel framework called 2D Fisher discriminant analysis (2D-FDA) is proposed to deal with the small sample size (SSS) problem in conventional one-dimensional linear discriminant analysis (1D-LDA). Different from the 1D-LDA based approaches, 2D-FDA is based on 2D image matrices rather than column vectors so the image matrix does not need to be transformed into a long vector before feature extraction. The advantage arising in this way is that the SSS problem does not exist any more because the between-class and within-class scatter matrices constructed in 2D-FDA are both of full-rank. This framework contains unilateral and bilateral 2D-FDA. It is applied to face recognition where only few training images exist for each subject. Both the unilateral and bilateral 2D-FDA achieve excellent performance on two public databases: ORL database and Yale face database B.
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