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arxiv:2505.19084

Jodi: Unification of Visual Generation and Understanding via Joint Modeling

Published on May 25
ยท Submitted by xyfJASON on May 27
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Abstract

Jodi, a diffusion framework using a linear diffusion transformer and role switch mechanism, unifies visual generation and understanding, performing joint, controllable, and perceptual tasks effectively across multiple visual domains.

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Visual generation and understanding are two deeply interconnected aspects of human intelligence, yet they have been traditionally treated as separate tasks in machine learning. In this paper, we propose Jodi, a diffusion framework that unifies visual generation and understanding by jointly modeling the image domain and multiple label domains. Specifically, Jodi is built upon a linear diffusion transformer along with a role switch mechanism, which enables it to perform three particular types of tasks: (1) joint generation, where the model simultaneously generates images and multiple labels; (2) controllable generation, where images are generated conditioned on any combination of labels; and (3) image perception, where multiple labels can be predicted at once from a given image. Furthermore, we present the Joint-1.6M dataset, which contains 200,000 high-quality images collected from public sources, automatic labels for 7 visual domains, and LLM-generated captions. Extensive experiments demonstrate that Jodi excels in both generation and understanding tasks and exhibits strong extensibility to a wider range of visual domains. Code is available at https://github.com/VIPL-GENUN/Jodi.

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@akhaliq @kramp
Hi, AK and HF team,

We're excited to share our latest work, "Jodi: Unification of Visual Generation and Understanding via Joint Modeling".

In this paper, we introduce Jodi, a diffusion framework that unifies visual generation and understanding by jointly modeling the image domain and multiple label domains. Jodi is built upon a linear diffusion transformer with a role switch mechanism, enabling joint generation, controllable generation, and image perception tasks in a unified diffusion model.

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