dc.description.abstract |
The deployment of biometrics features based person identification has increased significantly
from border access to mobile unlock to electronic transactions. Iris recognition is considered as
one of the most accurate biometric modality for person identification. However, the vulnerability
of this recognition towards presentation attacks, especially towards the 3D contact lenses, can
limit its potential deployments. The textured lenses are so effective in hiding the real texture of
iris that it can fool not only the automatic recognition algorithms but also the human examiners. While in literature, several presentation attack detection (PAD) algorithms are presented;
however, the significant limitation is the generalizability against an unseen database, unseen
sensor, and different imaging environment. Inspired by the success of the hybrid algorithm or
fusion of multiple detection networks, we have proposed a deep learning-based PAD network
that utilizes multiple feature representation layers. The computational complexity is an essential factor in training the deep neural networks; therefore, to limit the computational complexity
while learning multiple feature representation layers, a base model is kept the same. The network is trained end-to-end using a softmax classifier. We have evaluated the performance of
the proposed network termed as MVNet using multiple databases such as IIITD-WVU MUIPA,
IIITD-WVU UnMIPA database under cross-database training-testing settings. The experiments
are performed extensively to assess the generalizability of the proposed algorithm. |
en_US |