Papers
arxiv:2603.10702

UniCom: Unified Multimodal Modeling via Compressed Continuous Semantic Representations

Published on Mar 11
ยท Submitted by
YaqiZhao
on Mar 12
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Abstract

UniCom presents a unified multimodal framework that uses compressed continuous representations to improve visual understanding and generation while maintaining image consistency and controllability.

AI-generated summary

Current unified multimodal models typically rely on discrete visual tokenizers to bridge the modality gap. However, discretization inevitably discards fine-grained semantic information, leading to suboptimal performance in visual understanding tasks. Conversely, directly modeling continuous semantic representations (e.g., CLIP, SigLIP) poses significant challenges in high-dimensional generative modeling, resulting in slow convergence and training instability. To resolve this dilemma, we introduce UniCom, a unified framework that harmonizes multimodal understanding and generation via compressed continuous representation. We empirically demonstrate that reducing channel dimension is significantly more effective than spatial downsampling for both reconstruction and generation. Accordingly, we design an attention-based semantic compressor to distill dense features into a compact unified representation. Furthermore, we validate that the transfusion architecture surpasses query-based designs in convergence and consistency. Experiments demonstrate that UniCom achieves state-of-the-art generation performance among unified models. Notably, by preserving rich semantic priors, it delivers exceptional controllability in image editing and maintains image consistency even without relying on VAE.

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๐Ÿ”ฅ Ditch VAEs! UniCom achieves Unified Multimodal Understanding & Generation via "Compressed Continuous Semantics", unlocking SOTA controllable image editing while maintaining perfect visual consistency! ๐Ÿš€

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