MC-OCR挑战2021:移动捕获越南收据识别的多模式方法

Bao Hieu Tran, Duc Viet Hoang, Nguyen Manh Hiep, Pham Ngoc Bao Anh, Hoang Gia Bao, Nguyen Duc Anh, Bui Hai Phong, T. Nguyen, Phi-Le Nguyen, Thi-Lan Le
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引用次数: 2

摘要

移动捕获收据OCR (MC-OCR)从移动设备捕获的结构化和半结构化收据和发票中识别文本。在许多财务、会计和税务领域,该流程在简化文档密集型流程和办公自动化方面起着关键作用。尽管已经做出了许多努力,但由于移动拍摄图像的复杂性,MC-OCR仍然面临着重大挑战。首先,收据可能会被弄皱,或者内容可能会模糊不清。其次,与扫描图像不同,移动设备拍摄的照片由于拍摄收据的光线条件和动态环境(如室内、室外、复杂背景等)而呈现出高度的多样性。这些困难导致了识别结果的准确率较低。在这个挑战中,我们的目标是两个任务来解决这些问题,包括(1)评估捕获收据的质量,(2)识别收据的必要字段。我们的想法是利用一种多模式的方法,它可以利用两个领域:计算机视觉和自然语言处理,这是RIVF社区的两个主要兴趣。本文介绍了BK-OCR团队在2021年越南收据移动捕获图像文档识别中的方法和结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MC-OCR Challenge 2021: A Multi-modal Approach for Mobile-Captured Vietnamese Receipts Recognition
Mobile captured receipts OCR (MC-OCR) recognizes text from structured and semi-structured receipts and invoices captured by mobile devices. This process plays a critical role in streamlining document-intensive processes and office automation in many financial, accounting, and taxation areas. Although many efforts have been devoted, MC-OCR still faces significant challenges due to mobile captured images’ complexity. First, receipts might be crumpled, or the content might be blurred. Second, different from scanned images, the quality of photos taken by mobile devices shows high diversity due to the light condition and the dynamic environment (e.g., indoor, out-door, complex background, etc.) where the receipts were captured. These difficulties lead to a low accuracy of the recognition results. In this challenge, we target two tasks to address these issues, including (1) evaluating the quality of the captured receipts, and (2) recognizing required fields of the receipts. Our idea is to leverage a multi-modal approach which can take advantage of both areas: computer vision and natural language processing, two of the main interests of the RIVF community. The paper presents the BK-OCR team’s methodology and results in the Mobile-Captured Image Document Recognition for Vietnamese Receipts 2021.
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