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RelationAdapter: Learning and Transferring Visual Relation with Diffusion Transformers

About

Inspired by the in-context learning mechanism of large language models (LLMs), a new paradigm of generalizable visual prompt-based image editing is emerging. Existing single-reference methods typically focus on style or appearance adjustments and struggle with non-rigid transformations. To address these limitations, we propose leveraging source-target image pairs to extract and transfer content-aware editing intent to novel query images. To this end, we introduce RelationAdapter, a lightweight module that enables Diffusion Transformer (DiT) based models to effectively capture and apply visual transformations from minimal examples. We also introduce Relation252K, a comprehensive dataset comprising 218 diverse editing tasks, to evaluate model generalization and adaptability in visual prompt-driven scenarios. Experiments on Relation252K show that RelationAdapter significantly improves the model's ability to understand and transfer editing intent, leading to notable gains in generation quality and overall editing performance.

Yan Gong, Yiren Song, Yicheng Li, Chenglin Li, Yin Zhang• 2025

Related benchmarks

TaskDatasetResultRank
Exemplar-based Image EditingRelation-Adapter unseen (val)
CLIP-I0.862
10
Exemplar-based Image EditingHuman Preference Evaluation
Preference Score (Baseline)19.27
4
Exemplar-based Image EditingRelation seen tasks
CLIP-I0.858
4
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