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FormNetV2: Multimodal Graph Contrastive Learning for Form Document Information Extraction

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arxiv 2305.02549 v2 pith:FZAZWZ4M submitted 2023-05-04 cs.CL cs.CVcs.LG

FormNetV2: Multimodal Graph Contrastive Learning for Form Document Information Extraction

classification cs.CL cs.CVcs.LG
keywords graphmultimodalcontrastiveformnetv2learningmodalitiespre-trainingdocument
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The recent advent of self-supervised pre-training techniques has led to a surge in the use of multimodal learning in form document understanding. However, existing approaches that extend the mask language modeling to other modalities require careful multi-task tuning, complex reconstruction target designs, or additional pre-training data. In FormNetV2, we introduce a centralized multimodal graph contrastive learning strategy to unify self-supervised pre-training for all modalities in one loss. The graph contrastive objective maximizes the agreement of multimodal representations, providing a natural interplay for all modalities without special customization. In addition, we extract image features within the bounding box that joins a pair of tokens connected by a graph edge, capturing more targeted visual cues without loading a sophisticated and separately pre-trained image embedder. FormNetV2 establishes new state-of-the-art performance on FUNSD, CORD, SROIE and Payment benchmarks with a more compact model size.

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