用运动放大技术检测手指静脉活动性

Ramachandra Raghavendra, M. Avinash, S. Marcel, C. Busch
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引用次数: 44

摘要

手指静脉识别已成为一种准确可靠的生物识别技术,在各种安全应用中得到广泛应用。然而,使用手指静脉识别也表明它容易受到演示攻击(或直接攻击)。在这项工作中,我们提出了一种新的算法来识别呈现给传感器的手指静脉特征的活动性。该方法的核心思想是通过放大手指静脉的血流来测量其活动性。在这种程度上,我们采用欧拉视频放大(EVM)方法来增强所记录的手指静脉视频中的血液运动。接下来,我们进一步对放大后的视频进行处理,利用光流提取基于运动的特征来识别手指静脉伪影。广泛的实验是在一个相对较大的数据库中进行的,该数据库由来自100个受试者的300个独特手指实例的正常呈现静脉视频组成。通过使用激光和喷墨两种不同类型的打印机在高质量纸张上打印300个手指静脉样本的真实(或正常)呈现图像来捕获手指静脉人工制品数据库。与四种不同的成熟的最先进的方案进行了广泛的比较评估,证明了拟议方案的有效性。
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Finger vein liveness detection using motion magnification
Finger vein recognition has emerged as an accurate and reliable biometric modality that was deployed in various security applications. However, the use of finger vein recognition also indicated its vulnerability to presentation attacks (or direct attacks). In this work, we present a novel algorithm to identify the liveness of the finger vein characteristic that is presented to the sensor. The core idea of the proposed approach is to magnify the blood flow through the finger vein to measure its liveness. To this extent, we employ the Eulerian Video Magnification (EVM) approach to enhance the motion of the blood in the recorded finger vein video. Next, we further process the magnified video to extract the motion-based features using optical flow to identify the finger vein artefacts. Extensive experiments are carried out on a relatively large database that is comprised of normal presentations vein videos from 300 unique finger instances corresponding to 100 subjects. The finger vein artefact database is captured by printing 300 real (or normal) presentation image of the finger vein sample on a high-quality paper using two different kinds of printers namely laser and inkjet. Extensive comparative evaluation with four different well-established state-of-the-art schemes demonstrated the efficacy of the proposed scheme.
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