Nested AdaBoost procedure for classification and multi-class nonlinear discriminant analysis
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Tipo de produção
Artigo
Data de publicação
2020-07-12
Autores
FILISBINO, TIENE A.
GIRALDI, GILSON A.
Carlos E. Thomaz
GIRALDI, GILSON A.
Carlos E. Thomaz
Orientador
Periódico
SOFT COMPUTING
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Citação
FILISBINO, TIENE A.; GIRALDI, G. A.; THOMAZ, C. E. Nested AdaBoost procedure for classification and multi-class nonlinear discriminant analysis. SOFT COMPUTING, v. 24, p.17969–17990, 2020.
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Palavras-chave
PCA,Ranking PCA components,Separating hyperplanes,Ensemble methods,AdaBoost,Face image analysis
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Resumo
AdaBoost methods find an accurate classifier by combining moderate learners that can be computed using traditional techniques based, for instance, on separating hyperplanes. Recently, we proposed a strategy to compute each moderate learner
using a linear ensemble of weak classifiers that are built through the kernel support vector machine (KSVM) hypersurface
geometry. In this way, we apply AdaBoost procedure in a nested loop: Each iteration of the inner loop boosts weak classifiers
to a moderate one while the outer loop combines the moderate classifiers to build the global decision rule. In this paper, we
explore this methodology in two ways: (a) For classification in principal component analysis (PCA) spaces; (b) For multiclass nonlinear discriminant PCA, named MNDPCA. Up to the best of our knowledge, the former is a new AdaBoost-based
classification technique. Besides, in this paper we study the influence of kernel types for MNDPCA in order to set a near
optimum configuration for feature selection and ranking in PCA subspaces. We compare the proposed methodologies with
counterpart ones using facial expressions of the Radboud Faces database and Karolinska Directed Emotional Faces (KDEF)
image database. Our experimental results have shown that MNDPCA outperforms counterpart techniques for selecting PCA
features in the Radboud database while it performs close to the best technique for KDEF images. Moreover, the proposed
classifier achieves outstanding recognition rates if compared with the literature techniques.