Baldini Gianmarco, Steri Gary, Dimc Franc, Giuliani Raimondo, Kamnik Roman
European Commission, Joint Research Centre, Ispra 21027, Italy.
Faculty of Maritime Studies and Transport, University of Ljubljana, Portorož 6320, Slovenia.
Sensors (Basel). 2016 Jun 3;16(6):818. doi: 10.3390/s16060818.
The correct identification of smartphones has various applications in the field of security or the fight against counterfeiting. As the level of sophistication in counterfeit electronics increases, detection procedures must become more accurate but also not destructive for the smartphone under testing. Some components of the smartphone are more likely to reveal their authenticity even without a physical inspection, since they are characterized by hardware fingerprints detectable by simply examining the data they provide. This is the case of MEMS (Micro Electro-Mechanical Systems) components like accelerometers and gyroscopes, where tiny differences and imprecisions in the manufacturing process determine unique patterns in the data output. In this paper, we present the experimental evaluation of the identification of smartphones through their built-in MEMS components. In our study, three different phones of the same model are subject to repeatable movements (composing a repeatable scenario) using an high precision robotic arm. The measurements from MEMS for each repeatable scenario are collected and analyzed. The identification algorithm is based on the extraction of the statistical features of the collected data for each scenario. The features are used in a support vector machine (SVM) classifier to identify the smartphone. The results of the evaluation are presented for different combinations of features and Inertial Measurement Unit (IMU) outputs, which show that detection accuracy of higher than 90% is achievable.
智能手机的正确识别在安全或打击假冒领域有多种应用。随着假冒电子产品的复杂程度不断提高,检测程序必须更加准确,而且对被测智能手机不能造成破坏。即使不进行物理检查,智能手机的某些组件也更有可能显示其真伪,因为它们具有硬件指纹,通过简单检查它们提供的数据即可检测到。加速度计和陀螺仪等微机电系统(MEMS)组件就是这种情况,制造过程中的微小差异和不精确性决定了数据输出中的独特模式。在本文中,我们展示了通过智能手机内置的MEMS组件进行识别的实验评估。在我们的研究中,使用高精度机器人手臂让同一型号的三部不同手机进行可重复运动(构成一个可重复场景)。收集并分析每个可重复场景下MEMS的测量数据。识别算法基于提取每个场景下收集数据的统计特征。这些特征用于支持向量机(SVM)分类器中以识别智能手机。针对不同的特征组合和惯性测量单元(IMU)输出展示了评估结果,结果表明检测准确率可达到90%以上。