Open Access Open Access  Restricted Access Subscription Access
Open Access Open Access Open Access  Restricted Access Restricted Access Subscription Access

Multimodal Biometric Recognition by Combining the Features of Face, Ear and IRIS


Affiliations
1 Jayaraj Annapackiam C.S.I. College of Engineering, Nazareth, Tamilnadu, India
     

   Subscribe/Renew Journal


Now a day the traditional password identification is replaced by biometric recognition. Normally for the biometric recognition; fingerprint, iris, and face are widely used. Along with them here we are considering ear also. Here we are using ear as one of the biometrics with the existing biometric techniques in order to increase the performance. Images are processed well to reduce False Rejection Rate. The Principal Component Analysis (“eigen ear”) approach was used, obtaining 90.7 % recognition rate. So by combining ear along with face and iris, we get better efficiency. Therefore the features of ear and the features of face and the features of iris are combined together by means of fusion for comparison. Thus by fusing the features of ear, face, and iris we will get the recognition rate of 97%.

Keywords

Biometric, Ear Recognition, Face Recognition, Fusion, IRIS recognition, Multi-Biometric.
User
Subscription Login to verify subscription
Notifications
Font Size

Abstract Views: 201

PDF Views: 1




  • Multimodal Biometric Recognition by Combining the Features of Face, Ear and IRIS

Abstract Views: 201  |  PDF Views: 1

Authors

P. Stanley Johnson
Jayaraj Annapackiam C.S.I. College of Engineering, Nazareth, Tamilnadu, India

Abstract


Now a day the traditional password identification is replaced by biometric recognition. Normally for the biometric recognition; fingerprint, iris, and face are widely used. Along with them here we are considering ear also. Here we are using ear as one of the biometrics with the existing biometric techniques in order to increase the performance. Images are processed well to reduce False Rejection Rate. The Principal Component Analysis (“eigen ear”) approach was used, obtaining 90.7 % recognition rate. So by combining ear along with face and iris, we get better efficiency. Therefore the features of ear and the features of face and the features of iris are combined together by means of fusion for comparison. Thus by fusing the features of ear, face, and iris we will get the recognition rate of 97%.

Keywords


Biometric, Ear Recognition, Face Recognition, Fusion, IRIS recognition, Multi-Biometric.