SteerFace: Debiasing Synthetic Face Generation via Adaptive Residue Perturbation 文章

ArXiv CS.CV2026-06-01NEWSen作者: Yuxi Mi, Qiuyang Yuan, Jianqing Xu, Yichun Zhou, Xuan Zhao, Jun Wang, Rizen Guo, Shuigeng Zhou

摘要

arXiv:2605.30894v1 Announce Type: new Abstract: The shortage of legally compliant data for face recognition training has sparked growing interest in using synthetic data as an alternative. While recent diffusion-based methods enable the generation of photorealistic face images with strong identity adherence and data diversity, their downstream recognition performance still exhibits a significant synthetic-real gap. This paper identifies visual tendency as a previously underexplored limitation, whereby synthetic data exhibit an unrealistic prevalence of visual attributes and thus deviate from the real-data distribution. Visual tendency can be attributed to the generator's conditioning on identity embeddings, through which co-occurring residual visual cues are unintentionally absorbed into learned identity semantics.

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