Models & Optimisation and Mathematical Analysis Journal
Volume 1, Numéro 1, Pages 33-39
2012-12-17
Authors : Ouddane Wafaa . Benyettou Mohamed .
Gait human identification, considered as new biometric number, became a very active research field in the last few years. Realized works, until now, was based on classical techniques. In our work, we tried to extract the best characteristics that verify the uniqueness of the silhouette of the individual and the classification was done by two methods: multi-class Separator Vast Marge (SVM) and neural networks radial basis (RBF). The recognition rates obtained are satisfactory regarding the two methods (Highest 92.12% for SVM and 90.77% for RBF). By comparing the two methods we note that the main difference remains in the time that is expensive in SVM (one against one) compared to the RBF, which are known for their speed, it allows us to say that the RBF are more appropriate for real-time applications.
biometric,SVM,RBF,real time
Soltane Mohamed
.
pages 015-036.
Bougrine Soumia
.
Cherroun Hadda
.
Ziadi Djelloul
.
pages 6-11.
Legrioui Said
.
pages 34-39.
Sivasankar V
.
Chabane Toufik
.
Darchen Andre
.
pages 16-19.