DiffClean: Diffusion-based Makeup Removal for Accurate Age Estimation
DiffClean: Diffusion-based Makeup Removal for Accurate Age Estimation
Accurate age verification can protect underage users from unauthorized access to online platforms and e-commerce sites that provide age-restricted services. However, accurate age estimation can be confounded by several factors, including facial makeup that can induce changes to alter perceived identity and age to fool both humans and machines. In this work, we propose DiffClean which erases makeup traces using a text-guided diffusion model to defend against makeup attacks. DiffClean improves age estimation (minor vs. adult accuracy by 4.8%) and face verification (TMR by 8.9% at FMR=0.01%) over competing baselines on digitally simulated and real makeup images.
Ekta Balkrishna Gavas、Chinmay Hegde、Nasir Memon、Sudipta Banerjee
计算技术、计算机技术
Ekta Balkrishna Gavas,Chinmay Hegde,Nasir Memon,Sudipta Banerjee.DiffClean: Diffusion-based Makeup Removal for Accurate Age Estimation[EB/OL].(2025-07-17)[2025-08-25].https://arxiv.org/abs/2507.13292.点此复制
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