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Modality-Aware Integration with Large Language Models for Knowledge-Based Visual Question Answering

Junnan Dong, Qinggang Zhang, Huachi Zhou, Daochen Zha, Pai Zheng, Xiao Huang

202411 citationsDOIOpen Access PDF

Abstract

Knowledge-based visual question answering (KVQA) has been extensively studied to answer visual questions with external knowledge, e.g., knowledge graphs (KGs).While several attempts have been proposed to leverage large language models (LLMs) as an implicit knowledge source, it remains challenging since LLMs may generate hallucinations.Moreover, multiple knowledge sources, e.g., images, KGs and LLMs, cannot be readily aligned for complex scenarios.To tackle these, we present a novel modality-aware integration with LLMs for KVQA (MAIL).It carefully leverages multimodal knowledge for both image understanding and knowledge reasoning.Specifically, (i) we propose a two-stage prompting strategy with LLMs to densely embody the image into a scene graph with detailed visual features; (ii) We construct a coupled concept graph by linking the mentioned entities with external facts.(iii) A tailored pseudo-siamese graph medium fusion is designed for sufficient multimodal fusion.We utilize the shared mentioned entities in two graphs as mediums to bridge a tight intermodal exchange, while maximally preserving insightful intra-modal learning by constraining the fusion within mediums.Extensive experiments show the superiority of MAIL.

Topics & Concepts

Question answeringComputer scienceNatural language processingModality (human–computer interaction)Information retrievalArtificial intelligenceMultimodal Machine Learning ApplicationsSpeech and dialogue systemsGeographic Information Systems Studies