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arxiv:2505.23758

LoRAShop: Training-Free Multi-Concept Image Generation and Editing with Rectified Flow Transformers

Published on May 29
· Submitted by ydalva on May 30

Abstract

LoRAShop, a framework for multi-concept image editing with LoRA models, leverages spatially coherent feature activation in Flux-style diffusion transformers to achieve seamless integration of multiple subjects or styles while preserving global context and identity.

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We introduce LoRAShop, the first framework for multi-concept image editing with LoRA models. LoRAShop builds on a key observation about the feature interaction patterns inside Flux-style diffusion transformers: concept-specific transformer features activate spatially coherent regions early in the denoising process. We harness this observation to derive a disentangled latent mask for each concept in a prior forward pass and blend the corresponding LoRA weights only within regions bounding the concepts to be personalized. The resulting edits seamlessly integrate multiple subjects or styles into the original scene while preserving global context, lighting, and fine details. Our experiments demonstrate that LoRAShop delivers better identity preservation compared to baselines. By eliminating retraining and external constraints, LoRAShop turns personalized diffusion models into a practical `photoshop-with-LoRAs' tool and opens new avenues for compositional visual storytelling and rapid creative iteration.

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