Automatic text block separation in document images

Arvind K R, Peeta Basa, Pati, A. Ramakrishnan
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引用次数: 7

Abstract

Separation of printed text blocks from the non-text areas, containing signatures, handwritten text, logos and other such symbols, is a necessary first step for an OCR involving printed text recognition. In the present work, we compare the efficacy of some feature-classifier combinations to carry out this separation task. We have selected length-normalized horizontal projection profile (HPP) as the starting point of such a separation task. This is with the assumption that the printed text blocks contain lines of text which generate HPP's with some regularity. Such an assumption is demonstrated to be valid. Our features are the HPP and its two transformed versions, namely, eigen and Fisher profiles. Four well known classifiers, namely, nearest neighbor, linear discriminant function, SVM's and artificial neural networks have been considered and efficiency of the combination of these classifiers with the above features is compared. A sequential floating feature selection technique has been adopted to enhance the efficiency of this separation task. The results give an average accuracy of about 96%.
文档图像中的自动文本块分离
将打印文本块从包含签名、手写文本、徽标和其他此类符号的非文本区域中分离出来,是涉及打印文本识别的OCR的必要第一步。在本工作中,我们比较了一些特征分类器组合来执行该分离任务的有效性。我们选择长度归一化水平投影剖面(HPP)作为分离任务的起点。这是假设打印的文本块包含有一定规律地生成HPP的文本行。这种假设被证明是有效的。我们的特点是HPP和它的两个转换版本,即特征和费舍尔剖面。考虑了最近邻分类器、线性判别函数分类器、支持向量机分类器和人工神经网络分类器,并比较了这些分类器与上述特征相结合的效率。为了提高分离效率,采用了序列浮动特征选择技术。结果显示平均准确率约为96%。
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