LVP-M3: Language-aware Visual Prompt For Multilingual Multimodal Machine Translation · The Large Language Model Bible Contribute to LLM-Bible

LVP-M3: Language-aware Visual Prompt For Multilingual Multimodal Machine Translation

Guo Hongcheng, Liu Jiaheng, Huang Haoyang, Yang Jian, Li Zhoujun, Zhang Dongdong, Cui Zheng, Wei Furu. Arxiv 2022

[Paper]    
Applications Attention Mechanism Model Architecture Multimodal Models Prompting Reinforcement Learning

Multimodal Machine Translation (MMT) focuses on enhancing text-only translation with visual features, which has attracted considerable attention from both natural language processing and computer vision communities. Recent advances still struggle to train a separate model for each language pair, which is costly and unaffordable when the number of languages increases in the real world. In other words, the multilingual multimodal machine translation (Multilingual MMT) task has not been investigated, which aims to handle the aforementioned issues by providing a shared semantic space for multiple languages. Besides, the image modality has no language boundaries, which is superior to bridging the semantic gap between languages. To this end, we first propose the Multilingual MMT task by establishing two new Multilingual MMT benchmark datasets covering seven languages. Then, an effective baseline LVP-M3 using visual prompts is proposed to support translations between different languages, which includes three stages (token encoding, language-aware visual prompt generation, and language translation). Extensive experimental results on our constructed benchmark datasets demonstrate the effectiveness of LVP-M3 method for Multilingual MMT.

Similar Work