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Face anti-spoofing via motion magnification and multifeature videolet aggregation
Content Provider | Indraprastha Institute of Information Technology, Delhi |
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Author | Bharadwaj, Samarth Dhamecha, Tejas I Vatsa, Mayank Singh, Richa |
Abstract | For robust face biometrics, a reliable anti-spoofing approach has become an essential pre-requisite against attacks. While spoofing attacks are possible with any biometric modality, face spoofing attacks are relatively easy which makes facial biometrics especially vulnerable. This paper presents a new framework for face spoofing detection in videos using motion magnification and multifeature evidence aggregation in a windowed fashion. Micro- and macro- facial expressions commonly exhibited by subjects are first magnified using Eulerian motion magnification. Next, two feature extraction algorithms, a configuration of local binary pattern and motion estimation using histogram of oriented optical flow, are used to encode texture and motion (liveness) properties respectively. Multifeature windowed videolet aggregation of these two orthogonal features, coupled with support vector machine classification provides robustness to different attacks. The proposed approach is evaluated and compared with existing algorithms on publicly available Print Attack, Replay Attack, and CASIA-FASD databases. The proposed algorithm yields state-of-the-art performance and robust generalizability with low computational complexity. |
File Format | |
Language | English |
Access Restriction | Open |
Subject Keyword | Face recognition Anti-spoofing Obfuscation Motion magnification |
Content Type | Text |
Resource Type | Technical Report |
Subject | Data processing & computer science |