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Hauptverfasser: Sreelatha, Silpa Vadakkeeveetil, Nag, Sauradip, Awais, Muhammad, Belongie, Serge, Dutta, Anjan
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2509.15257
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author Sreelatha, Silpa Vadakkeeveetil
Nag, Sauradip
Awais, Muhammad
Belongie, Serge
Dutta, Anjan
author_facet Sreelatha, Silpa Vadakkeeveetil
Nag, Sauradip
Awais, Muhammad
Belongie, Serge
Dutta, Anjan
contents The rapid advancement of diffusion models has enabled high-fidelity and semantically rich text-to-image generation; however, ensuring fairness and safety remains an open challenge. Existing methods typically improve fairness and safety at the expense of semantic fidelity and image quality. In this work, we propose RespoDiff, a novel framework for responsible text-to-image generation that incorporates a dual-module transformation on the intermediate bottleneck representations of diffusion models. Our approach introduces two distinct learnable modules: one focused on capturing and enforcing responsible concepts, such as fairness and safety, and the other dedicated to maintaining semantic alignment with neutral prompts. To facilitate the dual learning process, we introduce a novel score-matching objective that enables effective coordination between the modules. Our method outperforms state-of-the-art methods in responsible generation by ensuring semantic alignment while optimizing both objectives without compromising image fidelity. Our approach improves responsible and semantically coherent generation by 20% across diverse, unseen prompts. Moreover, it integrates seamlessly into large-scale models like SDXL, enhancing fairness and safety. Code will be released upon acceptance.
format Preprint
id arxiv_https___arxiv_org_abs_2509_15257
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle RespoDiff: Dual-Module Bottleneck Transformation for Responsible & Faithful T2I Generation
Sreelatha, Silpa Vadakkeeveetil
Nag, Sauradip
Awais, Muhammad
Belongie, Serge
Dutta, Anjan
Computer Vision and Pattern Recognition
Machine Learning
The rapid advancement of diffusion models has enabled high-fidelity and semantically rich text-to-image generation; however, ensuring fairness and safety remains an open challenge. Existing methods typically improve fairness and safety at the expense of semantic fidelity and image quality. In this work, we propose RespoDiff, a novel framework for responsible text-to-image generation that incorporates a dual-module transformation on the intermediate bottleneck representations of diffusion models. Our approach introduces two distinct learnable modules: one focused on capturing and enforcing responsible concepts, such as fairness and safety, and the other dedicated to maintaining semantic alignment with neutral prompts. To facilitate the dual learning process, we introduce a novel score-matching objective that enables effective coordination between the modules. Our method outperforms state-of-the-art methods in responsible generation by ensuring semantic alignment while optimizing both objectives without compromising image fidelity. Our approach improves responsible and semantically coherent generation by 20% across diverse, unseen prompts. Moreover, it integrates seamlessly into large-scale models like SDXL, enhancing fairness and safety. Code will be released upon acceptance.
title RespoDiff: Dual-Module Bottleneck Transformation for Responsible & Faithful T2I Generation
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2509.15257