Safeguard Text-to-Image Diffusion Models with Human Feedback Inversion
Kim, Sanghyun, Jung, Seohyeon, Kim, Balhae, Choi, Moonseok, Shin, Jinwoo, Lee, Juho
–arXiv.org Artificial Intelligence
Existing models rely heavily on internet-crawled data, wherein problematic concepts persist due to incomplete filtration processes. While previous approaches somewhat alleviate the issue, they often rely on text-specified concepts, introducing challenges in accurately capturing nuanced concepts and aligning model knowledge with human understandings. In response, we propose a framework named Human Feedback Inversion (HFI), where human feedback on model-generated images is condensed into textual tokens guiding the mitigation or removal of problematic images. The proposed framework can be built upon existing techniques for the same purpose, enhancing their alignment with human judgment. By doing so, we simplify the training objective with a self-distillation-based technique, providing a strong baseline for concept removal. Our experimental results demonstrate our framework significantly reduces objectionable content generation while preserving image quality, contributing to the ethical deployment of AI in the public sphere.
arXiv.org Artificial Intelligence
Jul-17-2024
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