2021
DOI: 10.3390/s21062059
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Fingerprint Presentation Attack Detection Utilizing Spatio-Temporal Features

Abstract: This paper presents a novel mechanism for fingerprint dynamic presentation attack detection. We utilize five spatio-temporal feature extractors to efficiently eliminate and mitigate different presentation attack species. The feature extractors are selected such that the fingerprint ridge/valley pattern is consolidated with the temporal variations within the pattern in fingerprint videos. An SVM classification scheme, with a second degree polynomial kernel, is used in our presentation attack detection subsystem… Show more

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Cited by 9 publications
(12 citation statements)
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References 23 publications
(25 reference statements)
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“…Husseis et al [59] used eight global measures that included intensity, contrast and randomness. These features were extracted from fingerprint videos.…”
Section: Ref Year Dataset Methods Resultsmentioning
confidence: 99%
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“…Husseis et al [59] used eight global measures that included intensity, contrast and randomness. These features were extracted from fingerprint videos.…”
Section: Ref Year Dataset Methods Resultsmentioning
confidence: 99%
“…Husseis et al [60] , in an extension of their previous work [59] , utilized videos of fingerprints to extract five spatiotemporal features that allowed them to detect PAIs. An SVM with a second-degree polynomial kernel was used for classification.…”
Section: Ref Year Dataset Methods Resultsmentioning
confidence: 99%
See 1 more Smart Citation
“…For this purpose, the SVM [ 52 ] is used as a classifier, since it constantly achieved remarkable performances across different fingerprint PAD studies [ 34 , 35 , 53 , 54 , 55 , 56 , 57 ]. The SVM is designed to work on high-dimensional input data and derive binary decisions by defining a hyperplane that separates both classes.…”
Section: Presentation Attack Detection Methodsmentioning
confidence: 99%
“…Moreover, in the context of dynamic PAD mechanisms, we analyzed in our previous work [22] the variation of first order statistics in fingerprint videos of different sensing technologies where the mechanism achieved 18.1% BPCER for the thermal sensing and 19.5% BPCER for the optical sensing at 5% APCER for both. We extended the experiment by utilizing spatio-temporal feature extractors that consolidate the spatial fingerprint features with the temporal variations, which improved the accuracy to 3.89% BPCER for the thermal sensing and 1.11% BPCER for the optical sensing at 5% APCER for both [23].…”
Section: Fingerprint Presentation Attack Detectionmentioning
confidence: 99%