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Handwritten Text Extraction from Bank Cheque Images by a Multivariate Classification Process

机译:通过多元分类过程从银行支票图像中提取手写文本

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摘要

In this paper we present an identification and extraction process of textual elements based on some local features. Using local features produces a document independent process, which is therefore more generic and free of heuristic based decisions, as in the case of contextual information that is also discarded in this work. The observed features supply a classifier which distinguishes between handwritten and machine printed elements. We detail some shape and content based features and present a set of them elected to perform the textual elements classification. Bank cheque images from several different institutions and writers were used to evaluate the performance of the process. Preliminary results demonstrate the efficiency of this approach and its potential. A brief comparison with previous works is also presented in order to highlight some benefits of the present methodology.
机译:在本文中,我们提出了基于一些局部特征的文本元素的识别和提取过程。使用局部特征会产生独立于文档的过程,因此该过程更加通用,并且没有基于启发式的决策,就像上下文信息在此工作中也会被丢弃一样。观察到的特征提供了一个区分手写和机器打印元素的分类器。我们详细介绍了一些基于形状和内容的特征,并提出了一组特征以进行文本元素分类。来自几个不同机构和作者的银行支票图像被用来评估该过程的性能。初步结果证明了这种方法的效率及其潜力。还提出了与以前的作品的简要比较,以强调本方法学的一些好处。

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