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arxiv:2512.02014

TUNA: Taming Unified Visual Representations for Native Unified Multimodal Models

Published on Dec 1
· Submitted by taesiri on Dec 2
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Abstract

TUNA, a unified multimodal model, uses a cascaded VAE and representation encoder for end-to-end multimodal understanding and generation, outperforming decoupled models and achieving state-of-the-art results across various benchmarks.

AI-generated summary

Unified multimodal models (UMMs) aim to jointly perform multimodal understanding and generation within a single framework. We present TUNA, a native UMM that builds a unified continuous visual representation by cascading a VAE encoder with a representation encoder. This unified representation space allows end-to-end processing of images and videos for both understanding and generation tasks. Compared to prior UMMs with decoupled representations, TUNA's unified visual space avoids representation format mismatches introduced by separate encoders, outperforming decoupled alternatives in both understanding and generation. Moreover, we observe that stronger pretrained representation encoders consistently yield better performance across all multimodal tasks, highlighting the importance of the representation encoder. Finally, in this unified setting, jointly training on both understanding and generation data allows the two tasks to benefit from each other rather than interfere. Our extensive experiments on multimodal understanding and generation benchmarks show that TUNA achieves state-of-the-art results in image and video understanding, image and video generation, and image editing, demonstrating the effectiveness and scalability of its unified representation design.

Community

@taesiri Thx for sharing! Could you also attach this video?

Paper submitter

Oops! Sorry @Yuren — unfortunately, Hugging Face doesn't allow editing the thumbnail video. If you'd like, I can reach out to someone on the Hugging Face team to remove the paper so you can resubmit it. Just let me know!

Paper author

Oops! Sorry @Yuren — unfortunately, Hugging Face doesn't allow editing the thumbnail video. If you'd like, I can reach out to someone on the Hugging Face team to remove the paper so you can resubmit it. Just let me know!

never mind:) it's ok

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