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Adapting BLSTM Neural Network Based Keyword Spotting Trained on Modern Data to Historical Documents

机译:将基于现代数据训练的基于BLSTM神经网络的关键字识别技术应用于历史文献

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Being able to search for words or phrases in historic handwritten documents is of paramount importance when preserving cultural heritage. Storing scanned pages of written text can save the information from degradation, but it does not make the textual information readily available. Automatic keyword spotting systems for handwritten historic documents can fill this gap. However, most such systems have trouble with the great variety of writing styles. It is not uncommon for handwriting processing systems to be built for just a single book. In this paper we show that neural network based keyword spotting systems are flexible enough to be used successfully on historic data, even when they are trained on a modern handwriting database. We demonstrate that with little transcribed historic text, added to the training set, the performance can further be enhanced.
机译:在保护文化遗产时,能够搜索历史手写文档中的单词或短语至关重要。存储已扫描的书面文字页面可以节省信息的质量,但是并不能使文本信息随时可用。手写历史文档的自动关键字发现系统可以填补这一空白。但是,大多数这样的系统在各种各样的书写方式上有麻烦。仅为一本书构建手写处理系统的情况并不少见。在本文中,我们证明了基于神经网络的关键字发现系统具有足够的灵活性,即使在现代手写数据库上进行了训练,也可以成功地用于历史数据。我们证明,只需将很少的转录历史文本添加到训练集中,就可以进一步提高性能。

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