2019 IEEE 5th International Conference on Identity, Security, and Behavior Analysis (ISBA) 2019
DOI: 10.1109/isba.2019.8778520
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FDFNet: A Secure Cancelable Deep Finger Dorsal Template Generation Network Secured via. Bio-Hashing

Abstract: Present world has already been consistently exploring the fine edges of online and digital world by imposing multiple challenging problems/scenarios. Similar to physical world, personal identity management is very crucial inorder to provide any secure online system. Last decade has seen a lot of work in this area using biometrics such as face, fingerprint, iris etc. Still there exist several vulnerabilities and one should have to address the problem of compromised biometrics much more seriously, since they can… Show more

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Cited by 4 publications
(2 citation statements)
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“…Deep learning techniques designed to mitigate ARM include the works of Singh et al [130], Ren et al [131], Pinto et al [110,111], Talreja et al [132], and Walia et al [112]. In [130], the authors proposed a feature specific Finger Dorsal Feature Extraction Network FDFNet for discriminative feature extraction.…”
Section: ) Mechanisms Against Arm and Similarity-based Attacks Using ...mentioning
confidence: 99%
See 1 more Smart Citation
“…Deep learning techniques designed to mitigate ARM include the works of Singh et al [130], Ren et al [131], Pinto et al [110,111], Talreja et al [132], and Walia et al [112]. In [130], the authors proposed a feature specific Finger Dorsal Feature Extraction Network FDFNet for discriminative feature extraction.…”
Section: ) Mechanisms Against Arm and Similarity-based Attacks Using ...mentioning
confidence: 99%
“…Deep learning techniques designed to mitigate ARM include the works of Singh et al [130], Ren et al [131], Pinto et al [110,111], Talreja et al [132], and Walia et al [112]. In [130], the authors proposed a feature specific Finger Dorsal Feature Extraction Network FDFNet for discriminative feature extraction. Then biohashing is incorporated to secure the finger dorsal template via learning domain specific features and user-specific tokenized random number allocation.…”
Section: ) Mechanisms Against Arm and Similarity-based Attacks Using ...mentioning
confidence: 99%