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Reveal: Retrieval-Augmented Visual-Language Pre-Training with Multi-Source Multimodal Knowledge Memory

Ziniu Hu, Ahmet İşcen, Chen Sun, Zirui Wang, Kai-Wei Chang, Yizhou Sun, Cordelia Schmid, David A. Ross, Alireza Fathi

202370 citationsDOI

Abstract

In this paper, we propose an end-to-end Retrieval-Augmented Visual Language Model (REVEAL) that learns to encode world knowledge into a large-scale memory, and to retrieve from it to answer knowledge-intensive queries. Reveal consists of four key components: the memory, the encoder, the retriever and the generator. The large-scale memory encodes various sources of multimodal world knowledge (e.g. image-text pairs, question answering pairs, knowledge graph triplets, etc.) via a unified encoder. The retriever finds the most relevant knowledge entries in the memory, and the generator fuses the retrieved knowledge with the input query to produce the output. A key novelty in our approach is that the memory, encoder, retriever and generator are all pre-trained end-to-end on a massive amount of data. Furthermore, our approach can use a diverse set of multimodal knowledge sources, which is shown to result in significant gains. We show that Reveal achieves state-of-the-art results on visual question answering and image captioning. The project page of this work is reveal. github. io.

Topics & Concepts

Computer scienceClosed captioningNoveltyEncoderGenerator (circuit theory)Question answeringENCODENatural language processingEncoding (memory)Artificial intelligenceKnowledge graphInformation retrievalImage (mathematics)Quantum mechanicsPhilosophyPhysicsOperating systemChemistryPower (physics)BiochemistryGeneTheologyMultimodal Machine Learning ApplicationsDomain Adaptation and Few-Shot LearningAdvanced Image and Video Retrieval Techniques
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