Recognition-Based Approach of Numeral Extraction in Handwritten Chemistry Documents Using Contextual Knowledge

N. Ghanmi, A. Belaïd
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引用次数: 2

Abstract

This paper presents a complete procedure that uses contextual and syntactic information to identify and recognize amount fields in the table regions of chemistry documents. The proposed method is composed of two main modules. Firstly, a structural analysis based on connected component (CC) dimensions and positions identifies some special symbols and clusters other CCs into three groups: fragment of characters, isolated characters or connected characters. Then, a specific processing is performed on each group of CCs. The fragment of characters are merged with the nearest character or string using geometric relationship based rules. The characters are sent to a recognition module to identify the numeral components. For the connected characters, the final decision on the string nature (numeric or non-numeric) is made based on a global score computed on the full string using the height regularity property and the recognition probabilities of its segmented fragments. Finally, a simple syntactic verification at table row level is conducted in order to correct eventual errors. The experimental tests are carried out on real-world chemistry documents provided by our industrial partner eNovalys. The obtained results show the effectiveness of the proposed system in extracting amount fields.
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基于识别的基于上下文知识的手写化学文献数字提取方法
本文提出了一种利用上下文信息和句法信息识别化学文献表区域中数量字段的完整方法。该方法主要由两个模块组成。首先,根据连通成分的尺寸和位置进行结构分析,识别出一些特殊的符号,并将其他连通成分分为三组:字符片段、孤立字符和连通字符。然后,对每组cc执行特定的处理。使用基于几何关系的规则将字符片段与最近的字符或字符串合并。这些字符被送到一个识别模块来识别数字成分。对于连接字符,字符串性质(数字或非数字)的最终决定是基于使用高度正则性及其分割片段的识别概率在完整字符串上计算的全局分数。最后,在表行级别进行简单的语法验证,以纠正最终的错误。实验测试是在我们的工业合作伙伴eNovalys提供的真实化学文件上进行的。实验结果表明了该系统在萃取量领域的有效性。
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