detalle del documento
IDENTIFICACIÓN

oai:arXiv.org:2408.02750

Tema
Computer Science - Computer Vision... Electrical Engineering and Systems...
Autor
Mitcheff, Mahsa Tinsley, Patrick Czajka, Adam
Categoría

Computer Science

Año

2024

fecha de cotización

14/8/2024

Palabras clave
model contact privacy-safe iris images
Métrico

Resumen

This paper proposes a framework for a privacy-safe iris presentation attack detection (PAD) method, designed solely with synthetically-generated, identity-leakage-free iris images.

Once trained, the method is evaluated in a classical way using state-of-the-art iris PAD benchmarks.

We designed two generative models for the synthesis of ISO/IEC 19794-6-compliant iris images.

The first model synthesizes bona fide-looking samples.

To avoid ``identity leakage,'' the generated samples that accidentally matched those used in the model's training were excluded.

The second model synthesizes images of irises with textured contact lenses and is conditioned by a given contact lens brand to have better control over textured contact lens appearance when forming the training set.

Our experiments demonstrate that models trained solely on synthetic data achieve a lower but still reasonable performance when compared to solutions trained with iris images collected from human subjects.

This is the first-of-its-kind attempt to use solely synthetic data to train a fully-functional iris PAD solution, and despite the performance gap between regular and the proposed methods, this study demonstrates that with the increasing fidelity of generative models, creating such privacy-safe iris PAD methods may be possible.

The source codes and generative models trained for this work are offered along with the paper.

Mitcheff, Mahsa,Tinsley, Patrick,Czajka, Adam, 2024, Privacy-Safe Iris Presentation Attack Detection

Documento

Abrir

Compartir

Fuente

Artículos recomendados por ES/IODE IA

Investigation of Heavy Metal Analysis on Medicinal Plants Used for the Treatment of Skin Cancer by Traditional Practitioners in Pretoria
heavy metals medicinal plants skin cancer icp-ms health risk assessment treatment cancer plants 0 metal health medicinal