2022
DOI: 10.48550/arxiv.2207.12888
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LaKo: Knowledge-driven Visual Question Answering via Late Knowledge-to-Text Injection

Abstract: Visual question answering (VQA) often requires an understanding of visual concepts and language semantics, which relies on external knowledge. Most existing methods exploit pre-trained language models or/and unstructured text, but the knowledge in these resources are often incomplete and noisy. Some methods prefer to use knowledge graphs (KGs) which often have intensive structured knowledge, but the research is still quite preliminary. In this paper, we propose LaKo, a knowledge-driven VQA method via Late Know… Show more

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