文档图像中的文本提取:使用角点突出显示

Vikas Yadav, N. Ragot
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引用次数: 18

摘要

近年来,在文档图像分析(DIA)的大背景下,特别是在布局分析的框架下,对文档图像中的文本提取进行了广泛的研究。许多现有的技术依赖于基于预处理、图像变换或成分/边缘提取及其分析的复杂过程。同时,视频内部的文本提取也受到越来越多的关注,使用角点或关键点被证明是非常有效的。因为值得注意的是,很少有研究在文档图像中使用角点进行文本提取,所以我们在本文中建议评估与这种DIA方法相关的可能性。为此,我们设计了一个非常简单的基于FAST关键点的技术。第一阶段将图像分成块,计算每个块内点的密度。较密集的则作为文本块保存。然后,检查文本块的连通性,对文本块进行分组,得到完整的文本块。该技术已在不同类型的图像上进行了评估:不同语言(泰卢固语,阿拉伯语,法语),手写和打字,倾斜文档,不同分辨率的图像以及不同类型和数量的噪声(变形,墨点,渗出,获取(模糊,分辨率))等。在固定参数的情况下,该方法的查全率和查全率都接近或高于90%,表明该方法是有效的。因此,即使所提出的方法没有从理论方面提出突破,它也强调了不需要复杂的方法就可以实现准确的文本提取。此外,这种方法也可以很容易地改进,以更精确,鲁棒性和有用的更复杂的布局分析。
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Text Extraction in Document Images: Highlight on Using Corner Points
During past years, text extraction in document images has been widely studied in the general context of Document Image Analysis (DIA) and especially in the framework of layout analysis. Many existing techniques rely on complex processes based on preprocessing, image transforms or component/edges extraction and their analysis. At the same time, text extraction inside videos has received an increased interest and the use of corner or key points has been proven to be very effective. Because it is noteworthy to notice that very few studies were performed on the use of corner points for text extraction in document images, we propose in this paper to evaluate the possibilities associated with this kind of approach for DIA. To do that, we designed a very simple technique based on FAST key points. A first stage divide the image into blocks and the density of points inside each one is computed. The more dense ones are kept as text blocks. Then, connectivity of blocks is checked to group them and to obtain complete text blocks. This technique has been evaluated on different kind of images: different languages (Telugu, Arabic, French), handwritten as well as typewritten, skewed documents, images at different resolution and with different kind and amount of noises (deformations, ink dot, bleed through, acquisition (blur, resolution)), etc. Even with fixed parameters for all such kind of documents images, the precision and recall are close or higher to 90% which makes this basic method already effective. Consequently, even if the proposed approach does not propose a breakthrough from theoretical aspects, it highlights that accurate text extraction could be achieved without complex approach. Moreover, this approach could also be easily improved to be more precise, robust and useful for more complex layout analysis.
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