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arxiv 2208.11168 v1 pith:QSDQSZZW submitted 2022-08-23 cs.CV

Doc2Graph: a Task Agnostic Document Understanding Framework based on Graph Neural Networks

classification cs.CV
keywords doc2graphdocumentunderstandinganalysisdifferentextractionframeworkgraph
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Geometric Deep Learning has recently attracted significant interest in a wide range of machine learning fields, including document analysis. The application of Graph Neural Networks (GNNs) has become crucial in various document-related tasks since they can unravel important structural patterns, fundamental in key information extraction processes. Previous works in the literature propose task-driven models and do not take into account the full power of graphs. We propose Doc2Graph, a task-agnostic document understanding framework based on a GNN model, to solve different tasks given different types of documents. We evaluated our approach on two challenging datasets for key information extraction in form understanding, invoice layout analysis and table detection. Our code is freely accessible on https://github.com/andreagemelli/doc2graph.

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