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Robust multimodal biometric authentication on IoT device through ear shape and arm gesture

机译:通过耳朵形状和手臂手势对IOT设备的强大多模态生物认证

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摘要

Nowadays, authentication is required for both physical access to buildings and internal access to computers and systems. Biometrics are one of the emerging technologies used to protect these highly sensitive structures. However, biometric systems based on a single trait enclose several problems such as noise sensitivity and vulnerability to spoof attacks. In this regard, we present in this paper a fully unobtrusive and robust multimodal authentication system that automatically authenticates a user by the way he/she answers his/her phone, after extracting ear and arm gesture biometric modalities from this single action. To deal the challenges facing ear and arm gesture authentication systems in real-world applications, we propose a new method based on image fragmentation that makes the ear recognition more robust in relation to occlusion. The ear feature extraction process has been made locally using Local Phase Quantization (LPQ) in order to get robustness with respect to pose and illumination variation. We also propose a set of four statistical metrics to extract features from arm gesture signals. The two modalities are combined on score-level using a weighted sum. In order to evaluate our contribution, we conducted a set of experiments to demonstrate the contribution of each of the two biometrics and the advantage of their fusion on the overall performance of the system. The multimodal biometric system achieves an equal error rate (EER) of 5.15%.
机译:如今,物理访问建筑物和内部访问需要身份验证需要进行身份验证。生物识别技术是用于保护这些高度敏感结构的新兴技术之一。然而,基于单个特征的生物识别系统封装了几个问题,例如噪声敏感性和漏洞攻击的漏洞。在这方面,我们在本文中展示了一个完全不引人的和强大的多模式认证系统,通过从该单一动作提取耳朵和手臂手势后,通过他/她的手机的方式自动验证用户。为了应对现实世界应用中耳朵和手臂手势认证系统面临的挑战,我们提出了一种基于图像碎片的新方法,使耳朵识别与闭塞关系更加稳健。耳朵特征提取过程已经在本地使用局部相位量化(LPQ),以使姿势和照明变化得到鲁棒性。我们还提出了一组四个统计指标,以从ARM手势信号中提取特征。使用加权和,这两个模态在得分级别上组合。为了评估我们的贡献,我们进行了一系列实验,以证明每个生物识别技术中的每一个的贡献以及它们对系统整体性能的融合的优势。多模式生物识别系统实现了5.15%的相同错误率(eer)。

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