Towards Fair and Robust Face Parsing for Generative AI: A Multi-Objective Approach

Published: 03 Jun 2025, Last Modified: 03 Jun 2025CVPR 2025 DemoDivEveryoneRevisionsBibTeXCC BY 4.0
Keywords: Fairness in AI, Robust Face Parsing, Multi-Objective Optimization, Generative Adversarial Networks, Diffusion Models, Demographic Bias
TL;DR: We propose a multi-objective learning framework that improves fairness, robustness, and accuracy in face parsing models, leading to more equitable and photorealistic generative AI outputs.
Abstract: Face parsing is a fundamental task in computer vision, enabling applications such as identity verification, facial editing, and controllable image synthesis. However, existing face parsing models often lack fairness and robustness, leading to biased segmentation across demographic groups and errors under occlusions, noise, and domain shifts. These limitations affect downstream face synthesis, where segmentation biases can degrade generative model outputs. We propose a multi- objective learning framework that optimizes accuracy, fairness, and robustness in face parsing. Our approach introduces a homotopy-based loss function that dynamically adjusts the importance of these objectives during training. To evaluate its impact, we compare multi-objective and single-objective U-Net models in a GAN-based face synthesis pipeline (Pix2PixHD). Our results show that fairness-aware and robust segmenta- tion improves photorealism and consistency in face genera- tion. Additionally, we conduct preliminary experiments using ControlNet, a structured conditioning model for diffusion- based synthesis, to explore how segmentation quality influences guided image generation. Our findings demonstrate that multi- objective face parsing improves demographic consistency and robustness, leading to higher-quality GAN-based synthesis.
Submission Number: 12
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