Contactless biometric hand geometry recognition using a low-cost 3D camera

Jan Svoboda, M. Bronstein, M. Drahanský
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引用次数: 15

Abstract

In the past decade, the interest in using 3D data for biometric person authentication has increased significantly, propelled by the availability of affordable 3D sensors. The adoption of 3D features has been especially successful in face recognition applications, leading to several commercial 3D face recognition products. In other biometric modalities such as hand recognition, several studies have shown the potential advantage of using 3D geometric information, however, no commercial-grade systems are currently available. In this paper, we present a contactless 3D hand recognition system based on the novel Intel RealSense camera, the first mass-produced embeddable 3D sensor. The small form factor and low cost make this sensor especially appealing for commercial biometric applications, however, they come at the price of lower resolution compared to more expensive 3D scanners used in previous research. We analyze the robustness of several existing 2D and 3D features that can be extracted from the images captured by the RealSense camera and study the use of metric learning for their fusion.
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使用低成本3D相机的非接触式生物特征手部几何识别
在过去的十年中,由于价格合理的3D传感器的可用性,使用3D数据进行生物识别身份验证的兴趣大大增加。采用3D功能在人脸识别应用中尤其成功,导致了一些商业化的3D人脸识别产品。在其他生物识别模式中,如手识别,一些研究已经显示了使用3D几何信息的潜在优势,然而,目前还没有商业级系统可用。在本文中,我们提出了一种基于新型英特尔RealSense相机的非接触式3D手部识别系统,这是第一个批量生产的嵌入式3D传感器。小尺寸和低成本使得这种传感器对商业生物识别应用特别有吸引力,然而,与之前研究中使用的更昂贵的3D扫描仪相比,它们的分辨率较低。我们分析了几种现有的2D和3D特征的鲁棒性,这些特征可以从RealSense相机捕获的图像中提取,并研究了使用度量学习进行融合的方法。
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