MC-OCR Challenge 2021: End-to-end system to extract key information from Vietnamese Receipts

Duy Nguyen, Tuan-Anh Nguyen, Xuan-Chung Nguyen
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引用次数: 1

Abstract

In the information age, how to quickly obtain information and extract key information from massive and complex re-sources has become challenging. Extracting information from scanned or captured document is one of the most demanding process in many areas such as finance, accounting, and taxation. The current achievement in the computer vision field has shown a substantial improvement in the field of Optical Character Recognition (OCR), including text detection and recognition tasks. However, there are two challenges for current OCR. The first one is the quality of the input data which is captured by mobile phone. The quality is greatly affected by external factors like light condition, dynamic environment or blurry content. Secondly, Key Information Extraction (KIE) from documents, which is a downstream task of OCR, had been a largely under explored domain because the input documents have not only textual features extracting from OCR systems but also semantic visual features which are not fully utilized and play a critical role in KIE. In this paper, we propose an end-to-end system based on several state-of-the-art models from both computer vision and natural language processing areas to deal with the Mobile captured receipts OCR (MC-OCR) challenge, including two tasks: (1) evaluating the quality of the captured receipt, and (2) recognizing required fields of the receipt. Our code is publicly available at https://github.com/ndcuong9/MC_OCR
MC-OCR挑战2021:端到端系统从越南收据中提取关键信息
在信息时代,如何从海量复杂的资源中快速获取信息并提取关键信息已成为一项挑战。在金融、会计和税务等许多领域,从扫描或捕获的文档中提取信息是要求最高的过程之一。当前计算机视觉领域的成就已经在光学字符识别(OCR)领域取得了实质性的进步,包括文本检测和识别任务。然而,当前的OCR存在两个挑战。第一个是由手机捕获的输入数据的质量。画质受光线条件、动态环境或内容模糊等外部因素影响很大。其次,文档关键信息提取(Key Information Extraction, KIE)是OCR的下游任务,由于输入文档中既有从OCR系统中提取出来的文本特征,也有语义视觉特征,这些特征没有得到充分利用,在关键信息提取中起着至关重要的作用,因此一直是一个研究较少的领域。在本文中,我们提出了一个基于计算机视觉和自然语言处理领域的几个最先进的模型的端到端系统来处理移动捕获收据OCR (MC-OCR)挑战,包括两个任务:(1)评估捕获收据的质量;(2)识别收据的必要字段。我们的代码可以在https://github.com/ndcuong9/MC_OCR上公开获得
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