Auto-encoding Morph-tokens For Multimodal LLM · The Large Language Model Bible Contribute to LLM-Bible

Auto-encoding Morph-tokens For Multimodal LLM

Pan Kaihang, Tang Siliang, Li Juncheng, Fan Zhaoyu, Chow Wei, Yan Shuicheng, Chua Tat-seng, Zhuang Yueting, Zhang Hanwang. Arxiv 2024

[Paper] [Code]    
Has Code Multimodal Models Prompting

For multimodal LLMs, the synergy of visual comprehension (textual output) and generation (visual output) presents an ongoing challenge. This is due to a conflicting objective: for comprehension, an MLLM needs to abstract the visuals; for generation, it needs to preserve the visuals as much as possible. Thus, the objective is a dilemma for visual-tokens. To resolve the conflict, we propose encoding images into morph-tokens to serve a dual purpose: for comprehension, they act as visual prompts instructing MLLM to generate texts; for generation, they take on a different, non-conflicting role as complete visual-tokens for image reconstruction, where the missing visual cues are recovered by the MLLM. Extensive experiments show that morph-tokens can achieve a new SOTA for multimodal comprehension and generation simultaneously. Our project is available at https://github.com/DCDmllm/MorphTokens.

Similar Work