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insikt - Biometrics - # Fingerprint Image Synthesis with GANs and Diffusion Models

Innovative Fingerprint Image Synthesis Techniques Explored


Centrala begrepp
Novel approaches using GANs and diffusion models for high-quality fingerprint image synthesis.
Sammanfattning

The research explores the use of generative adversarial networks (GANs) and diffusion models to synthesize live and spoof fingerprint images while maintaining uniqueness. Various techniques, including image translation and style transfer, are employed to enhance the quality of generated images. Evaluation metrics such as Fréchet Inception Distance (FID) and False Acceptance Rate (FAR) are used to assess the realism and diversity of the generated fingerprints. The study also delves into the challenges of data scarcity in generating spoof fingerprints and proposes a method for artificial synthesis based on limited datasets.

Abstract:

  • Introduction to biometric technologies and challenges in collecting fingerprint data.
  • Distinction between live fingerprints and spoof fingerprints in biometric security.
  • Introduction of Denoising Diffusion Probabilistic Model (DDPM) for artificial synthesis of fingerprint patches.
  • Implementation of Wasserstein Generative Adversarial Network with Gradient Penalty (WGAN-GP) for comparison.
  • Use of style transfer techniques like cycleGAN for blending global structures with local features in fingerprint images.

Methods:

  • Description of DDPM architecture with U-Net structure.
  • Comparison between WGAN-GP model and DDPM-v2 model in terms of FID, KID, Precision, Recall, Density, Coverage.

Results:

  • Evaluation results show that DDPM-v2 outperforms other models in generating high-quality fingerprints.
  • Analysis of FAR for assessing uniqueness between real impostors and synthetic pairs.

Conclusion:

  • Proposal for synthesizing high-quality patch size fingerprint images using GANs and diffusion models while preserving unique features.
  • Discussion on the success of fingerprint transformation techniques based on spoofiness levels.
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Statistik
We find that when the spoof training data includes distinct spoof characteristics, it leads to improved live-to-spoof translation. Our best diffusion model achieved a FID of 15.78. The comparable WGAN-GP model achieved slightly higher FID while performing better in the uniqueness assessment due to a slightly lower FAR when matched against the training data, indicating better creativity. Moreover, we give example images showing that a DDPM model clearly can generate realistic fingerprint images.
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Djupare frågor

How can these innovative techniques be applied beyond fingerprint image synthesis?

These innovative techniques, such as generative adversarial networks (GANs) and diffusion models, can be applied in various fields beyond fingerprint image synthesis. For example: Medical Imaging: GANs can generate synthetic medical images for training AI algorithms without compromising patient privacy. Art and Design: Artists can use GANs to create unique artworks or designs by blending different styles or generating new patterns. Video Game Development: Developers can use GANs to create realistic textures, environments, and characters in video games. Fashion Industry: GANs can help designers generate new clothing designs or predict fashion trends based on existing data.

What are potential drawbacks or limitations of using GANs and diffusion models for image synthesis?

While GANs and diffusion models offer significant advantages in image synthesis, they also come with some drawbacks: Mode Collapse: GANs may suffer from mode collapse where the generator produces limited varieties of outputs. Training Instability: Both GANs and diffusion models require careful tuning of hyperparameters to ensure stable training. Data Quality Dependency: The quality of generated images heavily relies on the diversity and quality of the training data. Computational Resources: Training complex GAN architectures like CycleWGAN-GP requires substantial computational resources.

How might advancements in biometric authentication impact privacy regulations like GDPR?

Advancements in biometric authentication pose both opportunities and challenges regarding privacy regulations like GDPR: Enhanced Security: Biometric authentication offers a more secure method compared to traditional passwords but raises concerns about data protection due to its sensitive nature. Data Minimization: GDPR mandates that organizations collect only necessary personal data; thus, biometric systems must adhere to strict guidelines on storing and processing biometric information securely. Consent Requirements: Users must provide explicit consent for their biometric data collection under GDPR rules, ensuring transparency about how this data is used. 4Cross-Border Data Transfers: Biometric authentication systems involving international users need compliance with GDPR's restrictions on transferring personal data outside the EU. By addressing these considerations proactively, organizations implementing biometric technologies can navigate regulatory requirements while leveraging the benefits of advanced security measures provided by these technologies.
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