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Automatic Feature Extraction and Text Recognition From Scanned Topographic Maps

机译:从扫描的地形图自动提取特征和识别文本

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摘要

A system for automatic extraction of various feature layers and recognition of the text content of scanned topographic maps is presented here. Linear features which are often intersecting with the text are first extracted using a novel line representation method and a set of directional morphological operations. Other graphical objects are then removed in several stages to obtain a text-only image. A custom defect model is subsequently used to create an artificial training set for a Hidden Markov Model-based character recognition engine. Finally, the recovered text is recognized using this multifont segmentation-free optical character recognition (OCR). Extensive testing is conducted to assess the performance of different stages of the proposed system. Furthermore, our custom OCR is shown to achieve a 94% recognition rate for the extracted text, thereby outperforming a commercial OCR used as a benchmark.
机译:这里介绍了一个用于自动提取各种要素图层并识别扫描地形图的文本内容的系统。首先使用一种新颖的线表示方法和一组方向形态学运算来提取通常与文本相交的线性特征。然后,在多个阶段中删除其他图形对象,以获得纯文本图像。随后使用自定义缺陷模型为基于隐马尔可夫模型的字符识别引擎创建人工训练集。最后,使用此无多字体分割的光学字符识别(OCR)识别恢复的文本。进行了广泛的测试,以评估所提议系统不同阶段的性能。此外,我们的自定义OCR被证明可对提取的文本实现94%的识别率,从而胜过用作基准的商业OCR。

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