发票中的对象检测

Andrei-Stefan Bulzan, C. Cernazanu-Glavan
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引用次数: 0

摘要

从文档中提取关键字段信息是一项越来越令人垂涎的任务。以前的相关工作已经通过基于规则的系统或通过自然语言处理方法触及了这个主题。在本文中,我们把从发票中提取信息的任务看作是一个对象检测任务。为此,我们使用了三种不同的模型YOLOv5、Scaled YOLOv4和Faster R-CNN来检测发票中的关键字段信息。此外,我们提出了一种数据预处理方法,有助于更好地推广学习。所有的实验都是在一个定制的数据集上进行的,其中包含各种各样的发票布局。这一决定部分来自于缺乏任何合适的公共数据集,以及需要找到最好的过程来注释与此任务相关的数据。得到的结果令人鼓舞,使我们得出结论,目标检测是一种可行的信息提取方法。
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Object Detection in Invoices
Key field information extraction from documents is an increasingly covetable task. Previous related work has touched upon the subject through the lens of rule-based systems or through natural language processing methods. In this paper we see the task of information extraction from invoices as an object detection task. To this end, we used three different models YOLOv5, Scaled YOLOv4 and Faster R-CNN to detect key field information in invoices. Additionally, we propose a data preprocessing method that helps to better generalize the learning. All of the experiments were performed on a custom made dataset with a very high variety of invoice layouts. This decision comes in part from the lack of any suitable public dataset and from the need of finding the best procedure for annotating data pertaining to this task. The obtained results were encouraging, leading us to the conclusion that object detection is a viable method for information extraction.
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