Text Detection and Recognition by using CNNs in the Austro-Hungarian Historical Military Mapping Survey

Y. Can, M. E. Kabadayı
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引用次数: 2

Abstract

Historical maps include precious data about historical, geographical and economic perspectives of a period. However, several unique challenges and opportunities accompany historical maps compared to modern maps, such as low-quality images, degraded manuscripts and the huge quantity of non-annotated digital map collections. In the recent decade, Convolutional Neural Networks (CNNs) are applied to solve various image processing problems, but they need enormous annotated data to have accurate results. In this work, we annotated text regions of the Third Military Mapping Survey of Austria-Hungary historical map series conducted between 1884 and 1918 manually and made them accessible for researchers. Then, we detected the pixel-wise positions of text regions by employing the deep neural network architecture and recognized them with encouraging error rates.
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奥匈历史军事测绘调查中使用cnn的文本检测与识别
历史地图包含了一个时期的历史、地理和经济视角的宝贵数据。然而,与现代地图相比,历史地图面临着一些独特的挑战和机遇,例如低质量的图像、退化的手稿和大量没有注释的数字地图收藏。近十年来,卷积神经网络(cnn)被应用于解决各种图像处理问题,但它们需要大量的注释数据才能得到准确的结果。在这项工作中,我们对1884年至1918年间手工绘制的奥匈帝国历史地图系列第三次军事测绘调查的文本区域进行了注释,并使其可供研究人员访问。然后,我们使用深度神经网络架构检测文本区域的逐像素位置,并以令人鼓舞的错误率识别它们。
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