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Proceedings ArticleDOI

Face anti-spoofing with multifeature videolet aggregation

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TLDR
A novel multi-feature evidence aggregation method for face spoofing detection that fuses evidence from features encoding of both texture and motion properties in the face and also the surrounding scene regions and provides robustness to different attacks.
Abstract
Biometric systems can be attacked in several ways and the most common being spoofing the input sensor. Therefore, anti-spoofing is one of the most essential prerequisite against attacks on biometric systems. For face recognition it is even more vulnerable as the image capture is non-contact based. Several anti-spoofing methods have been proposed in the literature for both contact and non-contact based biometric modalities often using video to study the temporal characteristics of a real vs. spoofed biometric signal. This paper presents a novel multi-feature evidence aggregation method for face spoofing detection. The proposed method fuses evidence from features encoding of both texture and motion (liveness) properties in the face and also the surrounding scene regions. The feature extraction algorithms are based on a configuration of local binary pattern and motion estimation using histogram of oriented optical flow. Furthermore, the multi-feature windowed videolet aggregation of these orthogonal features coupled with support vector machine-based classification provides robustness to different attacks. We demonstrate the efficacy of the proposed approach by evaluating on three standard public databases: CASIA-FASD, 3DMAD and MSU-MFSD with equal error rate of 3.14%, 0%, and 0%, respectively.

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Citations
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Proceedings ArticleDOI

Face anti-spoofing using patch and depth-based CNNs

TL;DR: A novel two-stream CNN-based approach for face anti-spoofing is proposed, by extracting the local features and holistic depth maps from the face images, which facilitate CNN to discriminate the spoof patches independent of the spatial face areas.
Proceedings ArticleDOI

Searching Central Difference Convolutional Networks for Face Anti-Spoofing

TL;DR: Yu et al. as discussed by the authors proposed a frame level FAS method based on Central Difference Convolution (CDC), which is able to capture intrinsic detailed patterns via aggregating both intensity and gradient information.
Book ChapterDOI

Face De-Spoofing: Anti-Spoofing via Noise Modeling

TL;DR: A CNN architecture with proper constraints and supervisions is proposed to overcome the problem of having no ground truth for the decomposition of face de-spoofing, and the results show promising improvements due to the spoof noise modeling.
Journal ArticleDOI

A comprehensive overview of biometric fusion

TL;DR: A comprehensive review of techniques incorporating ancillary information in the biometric recognition pipeline is presented in this paper, where the authors provide a comprehensive overview of the role of information fusion in biometrics.
Journal ArticleDOI

Detecting Silicone Mask-Based Presentation Attack via Deep Dictionary Learning

TL;DR: This paper introduces the first-of-its-kind silicone mask attack database which contains 130 real and attacked videos to facilitate research in developing presentation attack detection algorithms for this challenging scenario.
References
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Proceedings ArticleDOI

Towards face unlock: on the difficulty of reliably detecting faces on mobile phones

TL;DR: An approach to a Face Unlock system on a smart phone intended to be more secure than current approaches while still being convenient to use is proposed, which uses both frontal and profile face information available during a pan shot around the user's head, by combining camera images and movement sensor data.

Face anti-spoofing via motion magnification and multifeature videolet aggregation

TL;DR: A new framework for face spoofing detection in videos using motion magnification and multifeature evidence aggregation in a windowed fashion is presented, which yields state-of-the-art performance and robust generalizability with low computational complexity.
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