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Unified Pretraining Framework for Document Understanding

About

Document intelligence automates the extraction of information from documents and supports many business applications. Recent self-supervised learning methods on large-scale unlabeled document datasets have opened up promising directions towards reducing annotation efforts by training models with self-supervised objectives. However, most of the existing document pretraining methods are still language-dominated. We present UDoc, a new unified pretraining framework for document understanding. UDoc is designed to support most document understanding tasks, extending the Transformer to take multimodal embeddings as input. Each input element is composed of words and visual features from a semantic region of the input document image. An important feature of UDoc is that it learns a generic representation by making use of three self-supervised losses, encouraging the representation to model sentences, learn similarities, and align modalities. Extensive empirical analysis demonstrates that the pretraining procedure learns better joint representations and leads to improvements in downstream tasks.

Jiuxiang Gu, Jason Kuen, Vlad I. Morariu, Handong Zhao, Nikolaos Barmpalios, Rajiv Jain, Ani Nenkova, Tong Sun• 2022

Related benchmarks

TaskDatasetResultRank
Document ClassificationRVL-CDIP (test)
Accuracy95.05
306
Information ExtractionCORD (test)
F1 Score98.94
133
Visual Question AnsweringTextVQA (test)
Accuracy40.7
124
Entity extractionFUNSD (test)
Entity F1 Score87.93
104
Visual Question AnsweringOCR-VQA (test)
Accuracy34.5
77
Form UnderstandingFUNSD (test)
F1 Score87.93
73
Information ExtractionFUNSD (test)
F1 Score87.93
55
Entity recognitionCORD official (test)
F1 Score98.94
37
Semantic Entity RecognitionFUNSD (test)
F1 Score87.96
37
Document Image ClassificationRVL-CDIP 1.0 (test)
Accuracy95.05
25
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