Face, gender and race classification using multi-regularized features learning

Autor: Mohamed Anouar Borgi, Demetrio Labate, Chokri Ben Amar, Maher El'arbi
Rok vydání: 2014
Předmět:
Zdroj: ICIP
DOI: 10.1109/icip.2014.7026068
Popis: This paper investigates a new approach for face, gender and race classification, called multi-regularized learning (MRL). This approach combines ideas from the recently proposed algorithms called multi-stage learning (MSL) and multi-task features learning (MTFL). In our approach, we first reduce the dimensionality of the training faces using PCA. Next, for a given a test (probe) face, we use MRL to exploit the relationships among multiple shared stages generated by changing the regularization parameter. Our approach results in convex optimization problem that controls the trade-off between the fidelity to the data (training) and the smoothness of the solution (probe). Our MRL algorithm is compared against different state-of-the-art methods on face recognition (FR), gender classification (GC) and race classification (RC) based on different experimental protocols with AR, LFW, FEI, Lab2 and Indian databases. Results show that our algorithm performs very competitively.
Databáze: OpenAIRE