CVAILGSep 1, 2023

Iterative Multi-granular Image Editing using Diffusion Models

arXiv:2309.00613v227 citations
Originality Incremental advance
AI Analysis

This addresses a pragmatic problem for creative professionals by enabling iterative and spatially controlled image editing, though it is incremental as it builds on existing diffusion models.

The paper tackles the problem of iterative and multi-granular image editing using diffusion models, proposing EMILIE to enable step-by-step edits with control over spatial reach, and demonstrates its effectiveness through quantitative and qualitative evaluations against state-of-the-art methods.

Recent advances in text-guided image synthesis has dramatically changed how creative professionals generate artistic and aesthetically pleasing visual assets. To fully support such creative endeavors, the process should possess the ability to: 1) iteratively edit the generations and 2) control the spatial reach of desired changes (global, local or anything in between). We formalize this pragmatic problem setting as Iterative Multi-granular Editing. While there has been substantial progress with diffusion-based models for image synthesis and editing, they are all one shot (i.e., no iterative editing capabilities) and do not naturally yield multi-granular control (i.e., covering the full spectrum of local-to-global edits). To overcome these drawbacks, we propose EMILIE: Iterative Multi-granular Image Editor. EMILIE introduces a novel latent iteration strategy, which re-purposes a pre-trained diffusion model to facilitate iterative editing. This is complemented by a gradient control operation for multi-granular control. We introduce a new benchmark dataset to evaluate our newly proposed setting. We conduct exhaustive quantitatively and qualitatively evaluation against recent state-of-the-art approaches adapted to our task, to being out the mettle of EMILIE. We hope our work would attract attention to this newly identified, pragmatic problem setting.

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