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Publication detail
KOHÚT, J. HRADIŠ, M.
Original Title
Finetuning Is a Surprisingly Effective Domain Adaptation Baseline in Handwriting Recognition
Type
conference paper
Language
English
Original Abstract
In many machine learning tasks, a large general dataset and a small specialized dataset are available. In such situations, various domain adaptation methods can be used to adapt a general model to the target dataset. We show that in the case of neural networks trained for handwriting recognition using CTC, simple finetuning with data augmentation works surprisingly well in such scenarios and that it is resistant to overfitting even for very small target domain datasets. We evaluated the behavior of finetuning with respect to augmentation, training data size, and quality of the pre-trained network, both in writer-dependent and writer-independent settings. On a large real-world dataset, finetuning provided an average relative CER improvement of 25 % with 16 text lines for new writers and 50 % for 256 text lines.
Keywords
Handwritten text recognition, OCR, Data augmentation, Finetuning.
Authors
KOHÚT, J.; HRADIŠ, M.
Released
19. 8. 2023
Publisher
Springer Nature Switzerland AG
Location
San José
ISBN
978-3-031-41684-2
Book
Document Analysis and Recognition - ICDAR 2023
Edition
Lecture Notes in Computer Science
0302-9743
Periodical
Year of study
14190
Number
1
State
Federal Republic of Germany
Pages from
269
Pages to
286
Pages count
18
URL
https://pero.fit.vutbr.cz/publications
BibTex
@inproceedings{BUT185151, author="Jan {Kohút} and Michal {Hradiš}", title="Finetuning Is a Surprisingly Effective Domain Adaptation Baseline in Handwriting Recognition", booktitle="Document Analysis and Recognition - ICDAR 2023", year="2023", series="Lecture Notes in Computer Science", journal="Lecture Notes in Computer Science", volume="14190", number="1", pages="269--286", publisher="Springer Nature Switzerland AG", address="San José", doi="10.1007/978-3-031-41685-9\{_}17", isbn="978-3-031-41684-2", issn="0302-9743", url="https://pero.fit.vutbr.cz/publications" }