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A new image binarisation technique for segmentation of text from digital images

机译:一种新的图像二线化技术,用于分割数字图像文本的分割

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摘要

Text segmentation in digital images is requisite for many image analysis and interpretation tasks. In this article, we have proposed an effective binarisation technique towards text segmentation from digital images. This image binarisation technique creates numerous texts as well as non-text connected components. Next, it is required to separate the possible text components from the obtained connected components. Further, to distinguish between text and non-text components, a set of features are considered. Then, during training, we consider the two feature files namely text and non-text prepared by us. Here, K-nearest neighbour (K-NN) and support vector machine (SVM) classifiers are considered for the present two class classification problem. The experiments are based on ICDAR 2011 born digital dataset. Our binarisation technique is also applied on publically available dataset street view text dataset (SVT), DIBCO 2009 and ICDAR 2011 Roust Reading Competition. We have accomplished in binarisation and as well as segmenting between text and non-text.
机译:数字图像中的文本分段是许多图像分析和解释任务的必要条件。在本文中,我们提出了一种有效的二进制化技术,用于从数字图像的文本细分。此图像二进制化技术创建了许多文本以及非文本连接组件。接下来,需要将可能的文本组件与所获得的连接组件分开。此外,为了区分文本和非文本组件,考虑了一组特征。然后,在培训期间,我们考虑两个功能文件即文本和由我们编制的非文本。这里,考虑k最近邻居(k-nn)和支持向量机(SVM)分类器用于本类分类问题。实验基于ICDAR 2011出生的数字数据集。我们的双式技术也适用于公开可用的数据集街景文本数据集(SVT),Dibco 2009和ICDAR 2011 Roust阅读竞赛。我们在Binarisation和文本和非文本之间进行了分割。

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