TY - JOUR
T1 - Feature Extraction by Using Dual-Generalized Discriminative Common Vectors
AU - Diaz-Chito, Katerine
AU - Martínez del Rincón, Jesús
AU - Rusiñol, Marçal
AU - Hernández-Sabaté, Aura
PY - 2019/3/15
Y1 - 2019/3/15
N2 - © 2018, Springer Science+Business Media, LLC, part of Springer Nature. In this paper, a dual online subspace-based learning method called dual-generalized discriminative common vectors (Dual-GDCV) is presented. The method extends incremental GDCV by exploiting simultaneously both the concepts of incremental and decremental learning for supervised feature extraction and classification. Our methodology is able to update the feature representation space without recalculating the full projection or accessing the previously processed training data. It allows both adding information and removing unnecessary data from a knowledge base in an efficient way, while retaining the previously acquired knowledge. The proposed method has been theoretically proved and empirically validated in six standard face recognition and classification datasets, under two scenarios: (1) removing and adding samples of existent classes, and (2) removing and adding new classes to a classification problem. Results show a considerable computational gain without compromising the accuracy of the model in comparison with both batch methodologies and other state-of-art adaptive methods.
AB - © 2018, Springer Science+Business Media, LLC, part of Springer Nature. In this paper, a dual online subspace-based learning method called dual-generalized discriminative common vectors (Dual-GDCV) is presented. The method extends incremental GDCV by exploiting simultaneously both the concepts of incremental and decremental learning for supervised feature extraction and classification. Our methodology is able to update the feature representation space without recalculating the full projection or accessing the previously processed training data. It allows both adding information and removing unnecessary data from a knowledge base in an efficient way, while retaining the previously acquired knowledge. The proposed method has been theoretically proved and empirically validated in six standard face recognition and classification datasets, under two scenarios: (1) removing and adding samples of existent classes, and (2) removing and adding new classes to a classification problem. Results show a considerable computational gain without compromising the accuracy of the model in comparison with both batch methodologies and other state-of-art adaptive methods.
KW - Decremental learning
KW - Dual learning
KW - Generalized discriminative common vectors
KW - Incremental learning
KW - Online feature extraction
UR - http://www.mendeley.com/research/feature-extraction-using-dualgeneralized-discriminative-common-vectors
U2 - 10.1007/s10851-018-0837-6
DO - 10.1007/s10851-018-0837-6
M3 - Article
SN - 0924-9907
VL - 61
SP - 331
EP - 351
JO - Journal of Mathematical Imaging and Vision
JF - Journal of Mathematical Imaging and Vision
ER -