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 NorHand v1 line detection model predicts the following elements from NorHand document images:
This model was developed during the HUGIN-MUNIN project.
The model has been trained using the Doc-UFCN library on the NorHand dataset. 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:
set | class | IoU | F1 | AP@[.5] | AP@[.75] | AP@[.5,.95] |
---|---|---|---|---|---|---|
train | vertical | 88.29 | 89.67 | 71.37 | 33.26 | 36.32 |
horizontal | 69.81 | 81.35 | 91.73 | 36.62 | 45.67 | |
val | vertical | 73.01 | 75.13 | 46.02 | 4.99 | 15.58 |
horizontal | 61.65 | 75.69 | 87.98 | 11.18 | 31.55 | |
test | vertical | 78.62 | 80.03 | 59.93 | 15.90 | 24.11 |
horizontal | 63.59 | 76.49 | 95.93 | 24.18 | 41.45 |
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}
}