A Visual Attention Grounding Neural Model For Multimodal Machine Translation · The Large Language Model Bible Contribute to LLM-Bible

A Visual Attention Grounding Neural Model For Multimodal Machine Translation

Zhou Mingyang, Cheng Runxiang, Lee Yong Jae, Yu Zhou. Arxiv 2018

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

We introduce a novel multimodal machine translation model that utilizes parallel visual and textual information. Our model jointly optimizes the learning of a shared visual-language embedding and a translator. The model leverages a visual attention grounding mechanism that links the visual semantics with the corresponding textual semantics. Our approach achieves competitive state-of-the-art results on the Multi30K and the Ambiguous COCO datasets. We also collected a new multilingual multimodal product description dataset to simulate a real-world international online shopping scenario. On this dataset, our visual attention grounding model outperforms other methods by a large margin.

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