Title
Motion Analysis Based Cross-Database Voting for Face Spoofing Detection.
Abstract
With the rapid development of face recognition systems in various practical applications, numerous face spoofing attacks under different environment and devices have emerged. The countermeasure of face spoofing attacks in cross-database have caused increasing attention. This paper proposes a face spoofing detection method with motion analysis based cross-database voting. We employ the consistency motion information of different databases like eye-blink, mouth movements and facial expression etc. Then the motion information maps of a video is classified to real or fake by CNN model. Furthermore, cross-database voting strategy is constructed to transfer motion characteristics from a database to another for face spoofing inference. Experimental results demonstrate that the proposed method outperforms its comparisons taking benefits of motion analysis based CNN classification and cross-database voting.
Year
Venue
Field
2017
CCBR
Countermeasure,Facial recognition system,Mouth movements,Voting,Spoofing attack,Computer science,Inference,Facial expression,Motion analysis,Database
DocType
Citations 
PageRank 
Conference
1
0.39
References 
Authors
11
6
Name
Order
Citations
PageRank
Lifang Wu18222.35
Yaowen Xu211.74
Meng Jian3598.07
Wei Cai417539.84
Chuncan Yan510.72
Yukun Ma643.19