Ocular biometrics in the visible spectrum have emerged as a prominent modality due to their high accuracy, resistance to spoofing, and non-invasive nature. However, morphing attacks, synthetic biometric traits created by blending features from multiple individuals, threaten biometric system integrity. While extensively studied for nearinfrared iris and face biometrics, morphing in visiblespectrum ocular data remains underexplored. Simulating such attacks demands advanced generation models that handle uncontrolled conditions while preserving detailed ocular features like iris boundaries and periocular textures. To address this gap, we introduce DOOMGAN, that encompasses landmark-driven encoding of visible ocular anatomy, attention-guided generation for realistic morph synthesis, and dynamic weighting of multi-faceted losses for optimized convergence. DOOMGAN achieves over 20% higher attack success rates than baseline methods under stringent thresholds, along with 20% better elliptical iris structure generation and 30% improved gaze consistency. We also release the first comprehensive ocular morphing dataset to support further research in this domain. The code is available at Vcbsl/DOOMGAN.
DOOMGAN: High-Fidelity Dynamic Identity Obfuscation Ocular Generative Morphing
Bharath Krishnamurthy,A. Rattani
Published 2025 in 2025 IEEE International Joint Conference on Biometrics (IJCB)
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- Publication year
2025
- Venue
2025 IEEE International Joint Conference on Biometrics (IJCB)
- Publication date
2025-07-23
- Fields of study
Computer Science, Engineering
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