基于深度学习和后验误差校正技术的钢材交货单识别

Ming Li, Weigang Wang, Kedong Wang, Xueliang Leng, Chuan-qin Zhang, Zhongwen Guo
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引用次数: 0

摘要

大宗商品流通的主要凭证是发货单。传统的仓储企业通过人工输入来接收货物,效率低下,容易出错。传统算法模型的识别率较低,不能大规模应用。本文根据钢材交货单的特点,通过算法技术的整合,提出了基于图像校正、文本定位、文本识别、后期验证的算法模型,解决了传统算法识别率低的问题。该识别模型的字符识别率大于95%。最后,开发了视觉手动校正功能,保证了输出文本数据100%的准确率。基于配送单智能识别技术,将传统的商品流通模式从基于传统纸质单据的线下流通系列流程转变为以信息共享云平台为载体的并行流程。我们构建了一个智能的大宗货物发货订单信息管理系统。业务实践表明,该系统能够快速准确地提取发货单据的文本信息,有效地提高了货物入库和流通的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Steel Delivery Order Recognition Based on Deep Learning and Posterior Error Correction Technology
The main voucher for the circulation of bulk goods is the delivery order. The traditional warehousing enterprise receives the goods through manual input, which is inefficient and error-prone. The recognition rate of the traditional algorithm model is low and cannot be applied on a large scale. According to the characteristics of steel delivery order, through the integration of algorithm technology, this paper proposes an algorithm model based on image correction, text location, text recognition, and post verification, which solves the problem of the low recognition rate of the traditional algorithm. The character recognition rate of the recognition model is more than 95%. Finally, a visual manual correction function is developed to ensure 100% accuracy of output text data. Based on the intelligent identification technology of delivery orders, the traditional goods circulation mode is transformed from the series process of offline circulation based on traditional paper documents to the parallel process with an information-sharing cloud platform as the carrier. We build an intelligent information management system of delivery order of bulk goods is constructed. The business practice shows that the system can quickly and accurately extract the text information of delivery documents and effectively improve the efficiency of goods warehousing and circulation.
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