论文标题
在智能手机上进行掌上印刷验证
Towards Palmprint Verification On Smartphones
论文作者
论文摘要
随着移动设备的快速开发,智能手机逐渐成为人们生活中必不可少的一部分。同时,生物特征识别验证已被证实是一种有效的方法,可以高信任地建立一个人的身份。因此,最近,智能手机的生物识别技术也变得越来越复杂和流行。但是,值得注意的是,掌上印有智能手机的应用潜力被严重低估。在过去的二十年中,研究表明,棕榈印刷在独特性和持久性方面具有出色的优点,并且具有很高的用户认可。但是,目前,专门研究智能手机的掌刻验证的研究仍然很零星,尤其是与面部或面向指纹的研究相比。在本文中,旨在填补上述研究差距,我们对智能手机的棕榈贴验证进行了彻底的研究,我们的贡献是双重的。首先,为了促进对智能手机掌上验证的研究,我们建立了一个名为MPD的带注释的棕榈印刷数据集,该数据集由多品牌智能手机在两个不同的背景和照明条件的两个单独的会话中收集。作为该领域最大的数据集,MPD包含从200名受试者收集的16,000张棕榈图像。其次,我们构建了一个基于DCNN的掌刻验证系统,名为DeepMPV+智能手机。在DeepMPV+中,两个关键步骤,ROI提取和ROI匹配,都被表达为学习问题,然后通过现代DCNN模型自然解决。 DEEPMPV+的效率和功效已通过广泛的实验得到了证实。为了使我们的结果完全可复制,已在https://cslinzhang.github.io/mobilepalmprint/上公开提供了标记的数据集和相关源代码。
With the rapid development of mobile devices, smartphones have gradually become an indispensable part of people's lives. Meanwhile, biometric authentication has been corroborated to be an effective method for establishing a person's identity with high confidence. Hence, recently, biometric technologies for smartphones have also become increasingly sophisticated and popular. But it is noteworthy that the application potential of palmprints for smartphones is seriously underestimated. Studies in the past two decades have shown that palmprints have outstanding merits in uniqueness and permanence, and have high user acceptance. However, currently, studies specializing in palmprint verification for smartphones are still quite sporadic, especially when compared to face- or fingerprint-oriented ones. In this paper, aiming to fill the aforementioned research gap, we conducted a thorough study of palmprint verification on smartphones and our contributions are twofold. First, to facilitate the study of palmprint verification on smartphones, we established an annotated palmprint dataset named MPD, which was collected by multi-brand smartphones in two separate sessions with various backgrounds and illumination conditions. As the largest dataset in this field, MPD contains 16,000 palm images collected from 200 subjects. Second, we built a DCNN-based palmprint verification system named DeepMPV+ for smartphones. In DeepMPV+, two key steps, ROI extraction and ROI matching, are both formulated as learning problems and then solved naturally by modern DCNN models. The efficiency and efficacy of DeepMPV+ have been corroborated by extensive experiments. To make our results fully reproducible, the labeled dataset and the relevant source codes have been made publicly available at https://cslinzhang.github.io/MobilePalmPrint/.