2020
DOI: 10.1109/access.2020.2971224
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Multi-Perspective Dynamic Features for Cross-Database Face Presentation Attack Detection

Abstract: With their growing popularity and widespread applications, face recognition systems are attracting more attention from attackers. Thus, face presentation attack detection has emerged as an important research topic in recent years. Existing methods for face presentation attack detection are affected by different cameras and display devices, and their performance is degraded in cross-database testing. In this paper, we propose a face presentation attack detection scheme that fuses multi-perspective dynamic featu… Show more

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Cited by 9 publications
(2 citation statements)
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References 41 publications
(47 reference statements)
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“…Lastly, the DWT-LBP-DCT features are generated to illustrate frequency spatial temporal data of video. Yukun et al [ 115 ] designed a scheme where two perspective dynamic features are extracted where the former involves the temporal motion properties of face video and latter uses visual beats of noise pattern. These extracted features are fused at decision level and an SVM classifier is fitted to differentiate face images into two labels.…”
Section: State-of-the Art Face Pad Mechanismsmentioning
confidence: 99%
“…Lastly, the DWT-LBP-DCT features are generated to illustrate frequency spatial temporal data of video. Yukun et al [ 115 ] designed a scheme where two perspective dynamic features are extracted where the former involves the temporal motion properties of face video and latter uses visual beats of noise pattern. These extracted features are fused at decision level and an SVM classifier is fitted to differentiate face images into two labels.…”
Section: State-of-the Art Face Pad Mechanismsmentioning
confidence: 99%
“…To solve the problem, the adaptation layer is exploited to transfer data with diverse distributions [13], [14], [15]. Transfer learning recently has been successfully applied in age estimation [16] or face expression recognition [17], [18], [19] of the cross-database classification. Whereas cross-database based pneumonia detection for heterogeneous data is of more practical significance and is still not really involved.…”
Section: Introductionmentioning
confidence: 99%