Doc-UFCN
Collection
This Doc-UFCN collection contains models designed to run various DLA tasks like the text line detection or page segmentation.
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4 items
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Updated
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2
The generic page detection model predicts single pages from document images.
The model has been trained using the Doc-UFCN library on Horae and READ-BAD datasets. It has been trained on images with their largest dimension equal to 768 pixels, keeping the original aspect ratio.
The model achieves the following results:
dataset | set | IoU | F1 | AP@[.5] | AP@[.75] | AP@[.5,.95] |
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HOME | test | 93.92 | 95.84 | 98.98 | 98.98 | 97.61 |
Horae | test | 96.68 | 98.31 | 99.76 | 98.49 | 98.08 |
Horae | test-300 | 95.66 | 97.27 | 98.87 | 98.45 | 97.38 |
Please refer to the Doc-UFCN library page to use this model.
@inproceedings{doc_ufcn2021,
author = {Boillet, Mélodie and Kermorvant, Christopher and Paquet, Thierry},
title = {{Multiple Document Datasets Pre-training Improves Text Line Detection With
Deep Neural Networks}},
booktitle = {2020 25th International Conference on Pattern Recognition (ICPR)},
year = {2021},
month = Jan,
pages = {2134-2141},
doi = {10.1109/ICPR48806.2021.9412447}
}