Generating Realistic Forehead-Creases for User Verification via Conditioned Piecewise Polynomial Curves
We propose a trait-specific image generation method that models forehead creases geometrically using B-spline and Bézier curves. This approach ensures the realistic generation of both principal creases and non-prominent crease patterns, effectively constructing detailed and authentic forehead-crease...
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Main Authors | , , , , |
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Format | Journal Article |
Language | English |
Published |
23.01.2025
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Subjects | |
Online Access | Get full text |
DOI | 10.48550/arxiv.2501.13889 |
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Summary: | We propose a trait-specific image generation method that models forehead
creases geometrically using B-spline and Bézier curves. This approach ensures
the realistic generation of both principal creases and non-prominent crease
patterns, effectively constructing detailed and authentic forehead-crease
images. These geometrically rendered images serve as visual prompts for a
diffusion-based Edge-to-Image translation model, which generates corresponding
mated samples. The resulting novel synthetic identities are then used to train
a forehead-crease verification network. To enhance intra-subject diversity in
the generated samples, we employ two strategies: (a) perturbing the control
points of B-splines under defined constraints to maintain label consistency,
and (b) applying image-level augmentations to the geometric visual prompts,
such as dropout and elastic transformations, specifically tailored to crease
patterns. By integrating the proposed synthetic dataset with real-world data,
our method significantly improves the performance of forehead-crease
verification systems under a cross-database verification protocol. |
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DOI: | 10.48550/arxiv.2501.13889 |