The Multimedia Signal Processing and Security Lab, University of Salzburg, 5020 Salzburg, Austria.
Center for Digital Safety & Security, AIT Austrian Institute of Technology, 2444 Seibersdorf, Austria.
Sensors (Basel). 2021 Mar 24;21(7):2248. doi: 10.3390/s21072248.
Recent developments enable biometric recognition systems to be available as mobile solutions or to be even integrated into modern smartphone devices. Thus, smartphone devices can be used as mobile fingerprint image acquisition devices, and it has become feasible to process fingerprints on these devices, which helps police authorities carry out identity verification. In this paper, we provide a comprehensive and in-depth engineering study on the different stages of the fingerprint recognition toolchain. The insights gained throughout this study serve as guidance for future work towards developing a contactless mobile fingerprint solution based on the iPhone 11, working without any additional hardware. The targeted solution will be capable of acquiring 4 fingers at once (except the thumb) in a contactless manner, automatically segmenting the fingertips, pre-processing them (including a specific enhancement), and thus enabling fingerprint comparison against contact-based datasets. For fingertip detection and segmentation, various traditional handcrafted feature-based approaches as well as deep-learning-based ones are investigated. Furthermore, a run-time analysis and first results on the biometric recognition performance are included.
最近的发展使得生物识别系统能够作为移动解决方案提供,甚至可以集成到现代智能手机设备中。因此,智能手机设备可以用作移动指纹图像采集设备,并且已经可以在这些设备上处理指纹,这有助于警察当局进行身份验证。在本文中,我们对指纹识别工具链的不同阶段进行了全面而深入的工程研究。通过这项研究获得的见解为未来的工作提供了指导,旨在开发一种基于 iPhone 11 的非接触式移动指纹解决方案,无需任何额外的硬件。目标解决方案能够以非接触的方式一次性采集 4 根手指(拇指除外),自动分割指尖,对其进行预处理(包括特定的增强),从而能够与基于接触的数据集进行指纹比较。对于指尖检测和分割,研究了各种基于传统手工制作特征的方法和基于深度学习的方法。此外,还包括运行时分析和生物识别性能的初步结果。