CVJun 5, 2025

SeedEdit 3.0: Fast and High-Quality Generative Image Editing

arXiv:2506.05083v247 citationsh-index: 24
Originality Incremental advance
AI Analysis

This work addresses the challenge of high-quality and fast image editing for users of generative models, representing an incremental improvement over prior versions.

The paper tackles the problem of generative image editing by introducing SeedEdit 3.0, which improves edit instruction following and image content preservation, achieving a usability rate of 56.1% compared to previous versions and competitors.

We introduce SeedEdit 3.0, in companion with our T2I model Seedream 3.0, which significantly improves over our previous SeedEdit versions in both aspects of edit instruction following and image content (e.g., ID/IP) preservation on real image inputs. Additional to model upgrading with T2I, in this report, we present several key improvements. First, we develop an enhanced data curation pipeline with a meta-info paradigm and meta-info embedding strategy that help mix images from multiple data sources. This allows us to scale editing data effectively, and meta information is helpfult to connect VLM with diffusion model more closely. Second, we introduce a joint learning pipeline for computing a diffusion loss and reward losses. Finally, we evaluate SeedEdit 3.0 on our testing benchmarks, for real/synthetic image editing, where it achieves a best trade-off between multiple aspects, yielding a high usability rate of 56.1%, compared to SeedEdit 1.6 (38.4%), GPT4o (37.1%) and Gemini 2.0 (30.3%).

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