@inproceedings{b3dddf2e761341888d79f943c4e40668,
title = "Data augmentation for ancient characters via blend-font net",
abstract = "Historical documents record a lot of precious information through ancient characters. However, some problems like unbalanced character samples and intra-class multi-modality inside the documents are critical factors that limit the performance of existing character recognition technologies. Therefore, we propose a two-stage font generation model, Blend-Font Net, which use some easy to get modern character datasets to augment ancient character dataset and solve these mentioned problems based on blend-font strategy. The model generates new samples by extracting and modifying the font information from the character image. A font generation model learns the mapping between different fonts in the first stage, and the slightly modified model learns how to generate samples that blend two different fonts in the second stage. Extra samples are generated for balancing historical documents dataset through the proposed model. Experiments show that our results have diverse visual effects and improve the accuracy of the text recognition network. Furthermore, the proposed method shows a broad application prospect in similar works as no font label required and multi-modality problem solved.",
keywords = "Data Augmentation, Font generation, GAN, Style Transfer, Unsupervised Learning",
author = "Xiaolu Ren and Kamata, {Sei Ichiro}",
note = "Publisher Copyright: {\textcopyright} 2021 SPIE; 13th International Conference on Digital Image Processing, ICDIP 2021 ; Conference date: 20-05-2021 Through 23-05-2021",
year = "2021",
doi = "10.1117/12.2599410",
language = "English",
series = "Proceedings of SPIE - The International Society for Optical Engineering",
publisher = "SPIE",
editor = "Xudong Jiang and Hiroshi Fujita",
booktitle = "Thirteenth International Conference on Digital Image Processing, ICDIP 2021",
}