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XYLayoutLM: Towards Layout-Aware Multimodal Networks For Visually-Rich Document Understanding

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arxiv 2203.06947 v2 pith:CWH2HKLQ submitted 2022-03-14 cs.CV cs.CL

XYLayoutLM: Towards Layout-Aware Multimodal Networks For Visually-Rich Document Understanding

classification cs.CV cs.CL
keywords informationdocumentembeddingslayoutmultimodalpositionunderstandingxylayoutlm
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recently, various multimodal networks for Visually-Rich Document Understanding(VRDU) have been proposed, showing the promotion of transformers by integrating visual and layout information with the text embeddings. However, most existing approaches utilize the position embeddings to incorporate the sequence information, neglecting the noisy improper reading order obtained by OCR tools. In this paper, we propose a robust layout-aware multimodal network named XYLayoutLM to capture and leverage rich layout information from proper reading orders produced by our Augmented XY Cut. Moreover, a Dilated Conditional Position Encoding module is proposed to deal with the input sequence of variable lengths, and it additionally extracts local layout information from both textual and visual modalities while generating position embeddings. Experiment results show that our XYLayoutLM achieves competitive results on document understanding tasks.

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Cited by 1 Pith paper

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  1. RT-DocLayout: Real-Time End-to-End Document Layout Analysis with Reading Order in the Wild

    cs.CV 2026-06 unverdicted novelty 5.0

    Presents RT-DocLayout, a 33M-parameter end-to-end model extending RT-DETR that unifies layout classification, detection, segmentation, and reading-order prediction at 132.1 FPS with claimed SOTA results on public benchmarks.