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DICE: Discrete Inversion Enabling Controllable Editing for Multinomial Diffusion and Masked Generative Models

Authors :
He, Xiaoxiao
Han, Ligong
Dao, Quan
Wen, Song
Bai, Minhao
Liu, Di
Zhang, Han
Min, Martin Renqiang
Juefei-Xu, Felix
Tan, Chaowei
Liu, Bo
Li, Kang
Li, Hongdong
Huang, Junzhou
Ahmed, Faez
Srivastava, Akash
Metaxas, Dimitris
Publication Year :
2024

Abstract

Discrete diffusion models have achieved success in tasks like image generation and masked language modeling but face limitations in controlled content editing. We introduce DICE (Discrete Inversion for Controllable Editing), the first approach to enable precise inversion for discrete diffusion models, including multinomial diffusion and masked generative models. By recording noise sequences and masking patterns during the reverse diffusion process, DICE enables accurate reconstruction and flexible editing of discrete data without the need for predefined masks or attention manipulation. We demonstrate the effectiveness of DICE across both image and text domains, evaluating it on models such as VQ-Diffusion, Paella, and RoBERTa. Our results show that DICE preserves high data fidelity while enhancing editing capabilities, offering new opportunities for fine-grained content manipulation in discrete spaces. For project webpage, see https://hexiaoxiao-cs.github.io/DICE/.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2410.08207
Document Type :
Working Paper