FLUXSynID: A Framework for Identity-Controlled Synthetic Face Generation with Document and Live Images
FLUXSynID: A Framework for Identity-Controlled Synthetic Face Generation with Document and Live Images
Synthetic face datasets are increasingly used to overcome the limitations of real-world biometric data, including privacy concerns, demographic imbalance, and high collection costs. However, many existing methods lack fine-grained control over identity attributes and fail to produce paired, identity-consistent images under structured capture conditions. We introduce FLUXSynID, a framework for generating high-resolution synthetic face datasets with user-defined identity attribute distributions and paired document-style and trusted live capture images. The dataset generated using the FLUXSynID framework shows improved alignment with real-world identity distributions and greater inter-set diversity compared to prior work. The FLUXSynID framework for generating custom datasets, along with a dataset of 14,889 synthetic identities, is publicly released to support biometric research, including face recognition and morphing attack detection.
Raul Ismayilov、Dzemila Sero、Luuk Spreeuwers
计算技术、计算机技术
Raul Ismayilov,Dzemila Sero,Luuk Spreeuwers.FLUXSynID: A Framework for Identity-Controlled Synthetic Face Generation with Document and Live Images[EB/OL].(2025-05-12)[2025-06-18].https://arxiv.org/abs/2505.07530.点此复制
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