While Identity Document Verification (IDV) technology on mobile devices becomes ubiquitous in modern business operations, the risk of identity theft and fraud is increasing. The identity document holder is normally required to participate in an online video interview to circumvent impostors. However, the current IDV process depends on an additional human workforce to support online step-by-step guidance which is inefficient and expensive. The performance of existing AI-based approaches cannot meet the real-time and lightweight demands of mobile devices. In this paper, we address those challenges by designing an edge intelligence-assisted approach for real-time IDV. Aiming at improving the responsiveness of the IDV process, we propose a new document localization model for mobile devices, LDRNet, to Localize the identity Document in Real-time. On the basis of a lightweight backbone network, we build three prediction branches for LDRNet, the corner points prediction, the line borders prediction and the document classification. We design novel supplementary targets, the equal-division points, and use a new loss function named Line Loss, to improve the speed and accuracy of our approach. In addition to the IDV process, LDRNet is an efficient and reliable document localization alternative for all kinds of mobile applications. As a matter of proof, we compare the performance of LDRNet with other popular approaches on localizing general document datasets. The experimental results show that LDRNet runs at a speed up to 790 FPS which is 47x faster, while still achieving comparable Jaccard Index(JI) in single-model and single-scale tests.
翻译:虽然移动装置的身份证件核查技术在现代商业活动中变得无处不在,但身份失窃和欺诈的风险正在增加。身份文件持有者通常需要参加在线视频采访,以规避冒名顶替者。然而,目前的IDV程序取决于增加人力队伍,以支持效率低和昂贵的在线逐步指导。现有的基于AI的方法无法满足移动装置的实时和轻量要求。在本文件中,我们通过为实时IDV设计一种边际情报辅助方法来应对这些挑战。为了提高IDV进程的反应能力,我们通常要求身份文件持有者参加在线视频访谈,以规避冒冒名顶替者。然而,目前的IDV程序取决于增加人力,以支持效率低和昂贵的在线逐步指导。现有基于AI的方法的绩效无法满足移动装置的实时和轻量要求。我们设计了新的补充目标,平等识别点,并使用名为线路标损失的新损失指数来提高我们办法的速度和准确性。除了在IMV进程中的新的文件本地格式化模式外,LDR网络是一种高效和可靠的运行方式。我们在通用文件的通用测试中,我们用通用的通用文件的通用文件运行中,在通用的通用文件运行中可以对通用文件进行对比。