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Deep Learning-Based Approaches for Contactless Fingerprints Segmentation and Extraction (2311.15163v1)

Published 26 Nov 2023 in cs.CV

Abstract: Fingerprints are widely recognized as one of the most unique and reliable characteristics of human identity. Most modern fingerprint authentication systems rely on contact-based fingerprints, which require the use of fingerprint scanners or fingerprint sensors for capturing fingerprints during the authentication process. Various types of fingerprint sensors, such as optical, capacitive, and ultrasonic sensors, employ distinct techniques to gather and analyze fingerprint data. This dependency on specific hardware or sensors creates a barrier or challenge for the broader adoption of fingerprint based biometric systems. This limitation hinders the widespread adoption of fingerprint authentication in various applications and scenarios. Border control, healthcare systems, educational institutions, financial transactions, and airport security face challenges when fingerprint sensors are not universally available. To mitigate the dependence on additional hardware, the use of contactless fingerprints has emerged as an alternative. Developing precise fingerprint segmentation methods, accurate fingerprint extraction tools, and reliable fingerprint matchers are crucial for the successful implementation of a robust contactless fingerprint authentication system. This paper focuses on the development of a deep learning-based segmentation tool for contactless fingerprint localization and segmentation. Our system leverages deep learning techniques to achieve high segmentation accuracy and reliable extraction of fingerprints from contactless fingerprint images. In our evaluation, our segmentation method demonstrated an average mean absolute error (MAE) of 30 pixels, an error in angle prediction (EAP) of 5.92 degrees, and a labeling accuracy of 97.46%. These results demonstrate the effectiveness of our novel contactless fingerprint segmentation and extraction tools.

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References (22)
  1. Fluorescence spectroscopy and multispectral imaging for fingerprinting of aflatoxin-b1 contaminated (zea mays l.) seeds: A preliminary study. Scientific Reports, 12(1):4849, 2022.
  2. Fingerprint composition and aging: A literature review. Science & Justice, 55(4):219–238, 2015.
  3. De-noising the image using dbst-lcm-clahe: A deep learning approach. Multimedia Tools and Applications, pages 1–26, 2023.
  4. C2cl: Contact to contactless fingerprint matching. IEEE Transactions on Information Forensics and Security, 17:196–210, 2021.
  5. Afr-net: Attention-driven fingerprint recognition network. IEEE Transactions on Biometrics, Behavior, and Identity Science, 2023.
  6. Topic classification of electric vehicle consumer experiences with transformer-based deep learning. Patterns, 2(2):100195, 2021.
  7. Deep residual learning for image recognition. In 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR), pages 770–778, 2016.
  8. Embdn: An efficient multiclass barcode detection network for complicated environments. IEEE Internet of Things Journal, 6(6):9919–9933, 2019.
  9. Walking and talking: A bilinear approach to multi-label action recognition. In 2015 IEEE Conference on Computer Vision and Pattern Recognition Workshops (CVPRW), pages 1–8, 2015.
  10. Kenneth Ko. Users guide to export controlled distribution of nist biometric image software (nbis-ec). 2007.
  11. Consistent multilabel classification. Advances in Neural Information Processing Systems, 28, 2015.
  12. On matching finger-selfies using deep scattering networks. IEEE Transactions on Biometrics, Behavior, and Identity Science, 2(4):350–362, 2020.
  13. Fingerprint sensing. Handbook of Fingerprint Recognition, pages 63–114, 2022.
  14. Fingerphoto presentation attack detection: Generalization in smartphones. In 2021 IEEE International Conference on Big Data (Big Data), pages 4518–4523, 2021.
  15. Deep age-invariant fingerprint segmentation system. arXiv preprint arXiv:2303.03341, 2023.
  16. Surveying biometric authentication for mobile device security. Journal of Pattern Recognition Research, 1(74-110):4, 2016.
  17. State-of-the-art in biometrics for multi-factor authentication in a federative context. Identity, 14:15, 2016.
  18. Mobile contactless fingerprint recognition: implementation, performance and usability aspects. Sensors, 22(3):792, 2022.
  19. Multi-label classification: An overview. Int. J. Data Warehous. Min., 3:1–13, 2007.
  20. Fingerprint vendor technology evaluation, nist interagency/internal report 8034: 2015, 2014.
  21. Comparative test of smartphone finger photo vs. touch-based cross-sensor fingerprint recognition. 2019 7th International Workshop on Biometrics and Forensics (IWBF), pages 1–6, 2019.
  22. Detectron2. 2019. 2019.

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