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Passage Retrieval for Outside-Knowledge Visual Question Answering

Chen Qu, Hamed Zamani, Liu Yang, W. Bruce Croft, Erik Learned-Miller

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Abstract

In this work, we address multi-modal information needs that contain text questions and images by focusing on passage retrieval for outside-knowledge visual question answering. This task requires access to outside knowledge, which in our case we define to be a large unstructured passage collection. We first conduct sparse retrieval with BM25 and study expanding the question with object names and image captions. We verify that visual clues play an important role and captions tend to be more informative than object names in sparse retrieval. We then construct a dual-encoder dense retriever, with the query encoder being LXMERT, a multi-modal pre-trained transformer. We further show that dense retrieval significantly outperforms sparse retrieval that uses object expansion. Moreover, dense retrieval matches the performance of sparse retrieval that leverages human-generated captions.

Topics & Concepts

Question answeringComputer scienceObject (grammar)Information retrievalConstruct (python library)Task (project management)Visual WordArtificial intelligenceImage retrievalEncoderNatural language processingQuery expansionDocument retrievalVisualizationObject detectionImage (mathematics)Semantics (computer science)Pattern recognition (psychology)Term (time)Human–computer information retrievalMultimodal Machine Learning ApplicationsAdvanced Image and Video Retrieval TechniquesDomain Adaptation and Few-Shot Learning
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