- Lima Júnior, Eucássio G;
- Vogado, Luis HS;
- Rabelo, Ricardo AL;
- Passarinho, Cornélia JP;
- Ushizima, Daniela M
- Editor(s): Bebis, George;
- Boyle, Richard;
- Parvin, Bahram;
- Koracin, Darko;
- Ushizima, Daniela;
- Chai, Sek;
- Sueda, Shinjiro;
- Lin, Xin;
- Lu, Aidong;
- Thalmann, Daniel;
- Wang, Chaoli;
- Xu, Panpan
In this work, we propose a workflow for face recognition under occlusion using the entropy projection from the curved Gabor filter, and create a representative and compact features vector that describes a face. Despite the reduced vector obtained by the entropy projection, it still presents opportunity for further dimensionality reduction. Therefore, we use a Random Forest classifier as an attribute selector, providing a 97% reduction of the original vector while keeping suitable accuracy. A set of experiments using three public image databases: AR Face, Extended Yale B with occlusion and FERET illustrates the proposed methodology, evaluated using the SVM classifier. The results obtained in the experiments show promising results when compared to the available approaches in the literature, obtaining 98.05% accuracy for the complete AR Face, 97.26% for FERET and 81.66% with Yale with 50% occlusion.