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MoMA: Multimodal LLM Adapter for Fast Personalized Image Generation

MoMA, an open-vocabulary and training-free model, uses a Multimodal Large Language Model to generate high-detail, identity-preserved images through an image diffusion model enhanced by a self-attention shortcut.

Year
2024
Venue
arXiv 2024
Authors
6
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Abstract onlyARXIV-DEFAULT

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arxiv.org/abs/2404.05674ARXIV-DEFAULT
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Abstract

In this paper, we present MoMA: an open-vocabulary, training-free personalized image model that boasts flexible zero-shot capabilities. As foundational text-to-image models rapidly evolve, the demand for robust image-to-image translation grows. Addressing this need, MoMA specializes in subject-driven personalized image generation. Utilizing an open-source, Multimodal Large Language Model (MLLM), we train MoMA to serve a dual role as both a feature extractor and a generator. This approach effectively synergizes reference image and text prompt information to produce valuable image features, facilitating an image diffusion model. To better leverage the generated features, we further introduce a novel self-attention shortcut method that efficiently transfers image features to an image diffusion model, improving the resemblance of the target object in generated images. Remarkably, as a tuning-free plug-and-play module, our model requires only a single reference image and outperforms existing methods in generating images with high detail fidelity, enhanced identity-preservation and prompt faithfulness. Our work is open-source, thereby providing universal access to these advancements.

Authors

6