Zhang et al., 2022 - Google Patents
Deep learning for finger vein recognition: A brief survey of recent trendZhang et al., 2022
View PDF- Document ID
- 7763390494743898151
- Author
- Zhang R
- Yin Y
- Deng W
- Li C
- Zhang J
- Publication year
- Publication venue
- arXiv preprint arXiv:2207.02148
External Links
Snippet
Finger vein image recognition technology plays an important role in biometric recognition and has been successfully applied in many fields. Because veins are buried beneath the skin tissue, finger vein image recognition has an unparalleled advantage, which is not easily …
- 210000003462 Veins 0 title abstract description 12
Similar Documents
Publication | Publication Date | Title |
---|---|---|
Hammad et al. | Multimodal biometric authentication systems using convolution neural network based on different level fusion of ECG and fingerprint | |
Qiu et al. | Finger vein presentation attack detection using total variation decomposition | |
Ungureanu et al. | Toward unconstrained palmprint recognition on consumer devices: A literature review | |
Wang et al. | Eye recognition with mixed convolutional and residual network (MiCoRe-Net) | |
Liang et al. | Innovative contactless palmprint recognition system based on dual-camera alignment | |
Anthony et al. | A review of face anti-spoofing methods for face recognition systems | |
Zhang et al. | Deep learning for finger vein recognition: A brief survey of recent trend | |
Awad et al. | Impact of some biometric modalities on forensic science | |
Morales et al. | Introduction to iris presentation attack detection | |
Mehraj et al. | A Survey of Biometric Recognition Using Deep Learning. | |
Du et al. | Scale invariant Gabor descriptor-based noncooperative iris recognition | |
Li et al. | Deep learning based fingerprint presentation attack detection: A comprehensive survey | |
Morales et al. | Introduction to presentation attack detection in iris biometrics and recent advances | |
Alhajim et al. | Enhancing and Securing a Real-Time Embedded Face Recognition System using Raspberry Pi | |
Aslam et al. | Gender classification based on isolated facial features and foggy faces using jointly trained deep convolutional neural network | |
Shao et al. | Eye-based recognition for user identification on mobile devices | |
Dhiman et al. | An introduction to deep learning applications in biometric recognition | |
Jain et al. | A Survey on Face Recognition Techniques in Machine Learning | |
El-Bashir et al. | Face Recognition Model Based on Covariance Intersection Fusion for Interactive devices | |
Mustapha et al. | A Survey on Video Face Recognition using Deep Learning | |
Kim | Face Anti-spoofing: A Comparative Review and Prospects | |
Vandana et al. | Analytical Review of Biometric Technology Employing Vivid Modalities | |
Malhotra et al. | User authentication via finger-selfies | |
Arora et al. | Liveness and threat aware selfie face recognition | |
Behera et al. | Dual-spectrum network: exploring deep visual feature to attribute mapping for cross-spectral periocular recognition |