MR-FIQA: Face Image Quality Assessment with Multi-Reference Representations from Synthetic Data Generation
Abstract
Recent advancements in Face Image Quality Assessment (FIQA) models trained on real large-scale face datasets are pivotal in guaranteeing precise face recognition in unrestricted scenarios. Regrettably, privacy concerns lead to the discontinuation of real datasets, underscoring the pressing need for a tailored synthetic dataset dedicated to the FIQA task. However, creating satisfactory synthetic datasets for FIQA is challenging. It requires not only controlling the intra-class degradation of different quality factors (e.g., pose, blur, occlusion) for the pseudo-identity generation but also designing an optimized quality characterization method for quality annotations. This paper undertakes the pioneering initiative to establish a Synthetic dataset for FIQA (SynFIQA) based on a hypothesis: accurate quality labelling can be achieved through the utilization of quality priors across the diverse domains involved in quality-controllable generation. To validate this, we tailor the generation of reference and degraded samples by aligning pseudo-identity image features in stable diffusion latent space, editing 3D facial parameters, and customizing dual text prompts and post-processing. Furthermore, we propose a novel quality characterization method that thoroughly examines the relationship of Multiple Reference representations among recognition embedding, spatial, and visual-language domains to acquire annotations essential for fitting FIQA models (MR-FIQA). Extensive experiments confirm the validity of our hypothesis and demonstrate the advantages of our SynFIQA data and MR-FIQA method.
Cite
Text
Ou et al. "MR-FIQA: Face Image Quality Assessment with Multi-Reference Representations from Synthetic Data Generation." International Conference on Computer Vision, 2025.Markdown
[Ou et al. "MR-FIQA: Face Image Quality Assessment with Multi-Reference Representations from Synthetic Data Generation." International Conference on Computer Vision, 2025.](https://mlanthology.org/iccv/2025/ou2025iccv-mrfiqa/)BibTeX
@inproceedings{ou2025iccv-mrfiqa,
title = {{MR-FIQA: Face Image Quality Assessment with Multi-Reference Representations from Synthetic Data Generation}},
author = {Ou, Fu-Zhao and Li, Chongyi and Wang, Shiqi and Kwong, Sam},
booktitle = {International Conference on Computer Vision},
year = {2025},
pages = {12915-12925},
url = {https://mlanthology.org/iccv/2025/ou2025iccv-mrfiqa/}
}