TL;DR
This paper introduces IMPOSE, a physics-inspired framework for generating multi-pose, identity-preserving contactless fingerprint samples to improve recognition accuracy across different modalities.
Contribution
IMPOSE is a novel, multi-stage, physics-inspired approach that synthesizes contactless fingerprint data with strict identity consistency for enhanced recognition.
Findings
Fine-tuning with IMPOSE data reduces EER to 8.74% on UWA.
Synthetic data improves performance across multiple fingerprint representations.
Hybrid training with synthetic and real data yields the best recognition results.
Abstract
Contactless fingerprint recognition has gained increasing attention due to its advantages in hygiene and acquisition flexibility. However, the absence of physical contact constraints introduces severe nonlinear geometric distortions caused by free finger poses in 3D space, resulting in a substantial cross-modal domain gap between contactless and conventional contact-based fingerprints. Existing solutions largely rely on explicit geometric correction or image enhancement, which are fragile under extreme pose variations. In this paper, we propose Identity-Consistent Multi-Pose Generation of Contactless Fingerprints (IMPOSE), a physics-inspired framework that synthesizes identity-preserving, multi-pose contactless fingerprint samples to empower recognition models. IMPOSE consists of three stages: (1) rolled fingerprint identity generation via latent diffusion with discrete codebook…
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