首页> 外文会议>International Conference on Distributed, Ambient, and Pervasive Interactions >A Look at Feet: Recognizing Tailgating via Capacitive Sensing
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A Look at Feet: Recognizing Tailgating via Capacitive Sensing

机译:看脚:通过电容感测识别尾随

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At many every day places, the ability to be reliably able to determine how many individuals are within an automated access control area, is of great importance. Especially in high-security areas such as banks and at country borders, access systems like mantraps or drop-arm turnstiles serve this purpose. These automated systems are designed to ensure that only one person can pass through a particular transit area at a time. State of the art systems use camera systems mounted in the ceiling to detect people sneaking in behind authorized individuals to pass through the transit space (tailgating attacks). Our novel method is inspired by recently achieved results in capacitive in-door-localization. Instead of estimating the position of humans, the pervasive capacitance of feet in the transit space is measured to detect tailgating attacks. We explore suitable sensing techniques and sensor-grid layout to be used for that application. In contrast to existing work, we use machine learning techniques for classification of the sensor's feature vector. The performance is evaluated on hardware-level, by defining its physical effectiveness. Tests with simulated attacks show its performance in comparison with competitive camera-image methods. Our method provides verification of tailgating attacks with an equal-error-rate of 3.5%, which outperforms other methods. We conclude with an evaluation of the amount of data needed for classification and highlight the usefulness of this method when combined with other imaging techniques.
机译:在许多日常的地方,能够可靠地确定有多少个人在自动访问控制区域内,具有重要意义。特别是在银行和国家边界等高安全性领域,像Mantraps或Drop-Arm旋转器等访问系统为此目的服务。这些自动化系统旨在确保只有一个人可以一次通过特定的传输区域。最先进的系统使用安装在天花板中的摄像机系统来检测人们在授权的人后面偷偷溜进,通过过境空间(尾随攻击)。我们的新方法是最近实现了电容式内部定位的结果。不是估计人的位置,测量传输空间中的脚的普遍电容以检测尾随攻击。我们探索适用于该应用的合适的传感技术和传感器网格布局。与现有工作相比,我们使用机器学习技术来分类传感器的特征向量。通过定义其物理效果,对硬件级别进行评估。与模拟攻击的测试显示其性能与竞争相机 - 图像方法相比。我们的方法提供了尾随攻击的核算,其差错率为3.5%,这优于其他方法。我们得出评价,评估分类所需的数据量,并在与其他成像技术结合时突出这种方法的有用性。

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