UniCom: Unified Multimodal Modeling via Compressed Continuous Semantic Representations
arXiv cs.CV / 3/12/2026
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Key Points
- The paper introduces UniCom, a unified multimodal modeling framework that uses compressed continuous semantic representations to bridge modality gaps without relying on discrete visual tokenizers.
- It shows that reducing channel dimension via an attention-based semantic compressor is more effective than spatial downsampling for both reconstruction and generation tasks.
- A transfusion architecture is proposed and demonstrated to outperform query-based designs in convergence and consistency.
- Experiments report state-of-the-art generation performance among unified models and highlight strong controllability in image editing while maintaining image consistency without relying on a VAE.
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