如何为单笔微调选择预训练的手写识别模型

Vittorio Pippi, S. Cascianelli, Christopher Kermorvant, R. Cucchiara
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引用次数: 2

摘要

基于深度学习的手写文本识别(HTR)的最新进展使得模型在大型基准数据集的现代和历史手稿上都具有出色的性能。然而,当应用于具有特殊特征的手稿时,这些模型很难获得相同的性能,例如语言、纸张支持、墨水和作者笔迹。这个问题与保存在历史档案中的有价值但数量很少的文件非常相关,因为获得足够的有注释的训练数据是昂贵的,或者在某些情况下是不可行的。为了克服这一挑战,一个可能的解决方案是在大型数据集上预训练HTR模型,然后在小型的单作者集合上对它们进行微调。在本文中,我们考虑了大型的、真实的基准数据集,以及使用样式手写文本生成模型获得的合成数据集。通过广泛的实验分析,也考虑到微调线的数量,我们给出了这些数据最相关特征的定量指示,以获得一个HTR模型,该模型能够有效地转录只有5条真正微调线的小型收藏中的手稿。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How to Choose Pretrained Handwriting Recognition Models for Single Writer Fine-Tuning
Recent advancements in Deep Learning-based Handwritten Text Recognition (HTR) have led to models with remarkable performance on both modern and historical manuscripts in large benchmark datasets. Nonetheless, those models struggle to obtain the same performance when applied to manuscripts with peculiar characteristics, such as language, paper support, ink, and author handwriting. This issue is very relevant for valuable but small collections of documents preserved in historical archives, for which obtaining sufficient annotated training data is costly or, in some cases, unfeasible. To overcome this challenge, a possible solution is to pretrain HTR models on large datasets and then fine-tune them on small single-author collections. In this paper, we take into account large, real benchmark datasets and synthetic ones obtained with a styled Handwritten Text Generation model. Through extensive experimental analysis, also considering the amount of fine-tuning lines, we give a quantitative indication of the most relevant characteristics of such data for obtaining an HTR model able to effectively transcribe manuscripts in small collections with as little as five real fine-tuning lines.
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