Affiliation:
1. Department of CSE, Ajay Kumar Garg Engineering College, Ghaziabad,India
2. Inderprastha Engineering College, Department of ECE, Ghaziabad,India
3. Indian Institute of Technology Delhi, New Delhi,India
Abstract
Background:
In recent history, fingerprint presentation attack detection (FPAD) proposal came out in a variety of
ways. A close-set approach uses pattern classification technique that best suits to a specific context and goal. Openset approach works fine in wider context, which is relatively robust with new fabrication material and independent
of sensor type. In both case results were promising but not too generalizable because of unseen condition not fitting
into method used. It is clear, the two key challenges in FPAD system, sensor interoperability and robustness with
new fabrication materials not addressed to date.
Objective:
To address above challenge a liveness detection model is proposed using live sample using transient
liveness factor and one-class CNN.
Methods:
In our architecture, liveness is predicted by using the fusion rule, score level fusion of two decisions.
Here, ‘n’ high quality live samples are initially trained for quality. We have observed that fingerprint liveness
information is ‘transitory’ in nature, a variation in the different live sample is natural. Thus, each live sample has a
‘transient liveness’ (TL) information. We use no-reference (NR) image quality measure (IQM) as a transient value
corresponding to each live sample. A consensus agreement is collectively reached in transient value to predict
adversarial input. Further, live sample at server are trained with augmented inputs on the one-class classifier to
predict the outlier. So, by using the fusion rule, score level fusion of consensus agreement and appropriately
characterized negative cases (or outliers) predicts liveness.
Results:
Our approach uses high quality 30-live sample only, out of 90 images available in dataset to reduce
learning time. We used Time Series images from LivDet competition 2015. It has 90-live images and 45-spoof
images made from Bodydouble, Ecoflex and Playdoh of each person. Fusion rule results in 100% accuracy in
recognising live as live.
Conclusion:
We have presented an architecture for liveness-server for extraction/updating transient liveness factor.
Our work explained here a significant step forward towards generalized and reproducible process with a
consideration towards the provision for the universal scheme as a need of today. The proposed TLF approach has a
solid presumption; it will address dataset heterogeneity as it incorporates wider scope-context. Similar results with
other dataset are under validation. Implementation seems difficult now but have several advantages when carried
out during the transformative process.
Publisher
Bentham Science Publishers Ltd.
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献