Open Access Open Access  Restricted Access Subscription Access

Ear Recognition and Occlusion


Affiliations
1 Mathematics Department, Mansoura University, Egypt
2 Mathematics Department, Helwan University, Egypt
3 Computer Science Department, Mansoura University, Egypt
 

Personal identification using 2D ear images still has many problems such as occlusion mostly caused by hair, earrings, and clothes. To avoid this problem, we propose to divide the ear image into non-overlapping equal divisions and identify persons through these non-occluded parts separately and then combine outputs of the classification of these parts in abstract, rank, and measurement level fusion. Experimental results show that the increasing of recognition rate through combining small parts of non-occluded divisions of ear image.

Keywords

Ear Recognition, LDA (Linear Discriminante Analysis), DCT (Discrete Cosine Transform), Combining Classifiers.
User
Notifications
Font Size

Abstract Views: 205

PDF Views: 127




  • Ear Recognition and Occlusion

Abstract Views: 205  |  PDF Views: 127

Authors

B. S. El-Desouky
Mathematics Department, Mansoura University, Egypt
M. El-Kady
Mathematics Department, Helwan University, Egypt
M. Z. Rashad
Computer Science Department, Mansoura University, Egypt
Mahmoud M. Eid
Mathematics Department, Mansoura University, Egypt

Abstract


Personal identification using 2D ear images still has many problems such as occlusion mostly caused by hair, earrings, and clothes. To avoid this problem, we propose to divide the ear image into non-overlapping equal divisions and identify persons through these non-occluded parts separately and then combine outputs of the classification of these parts in abstract, rank, and measurement level fusion. Experimental results show that the increasing of recognition rate through combining small parts of non-occluded divisions of ear image.

Keywords


Ear Recognition, LDA (Linear Discriminante Analysis), DCT (Discrete Cosine Transform), Combining Classifiers.