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Identification of Mobile Phones Using the Built-In Magnetometers Stimulated by Motion Patterns

机译:使用运动模式刺激的内置磁力计识别手机

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摘要

We investigate the identification of mobile phones through their built-in magnetometers. These electronic components have started to be widely deployed in mass market phones in recent years, and they can be exploited to uniquely identify mobile phones due their physical differences, which appear in the digital output generated by them. This is similar to approaches reported in the literature for other components of the mobile phone, including the digital camera, the microphones or their RF transmission components. In this paper, the identification is performed through an inexpensive device made up of a platform that rotates the mobile phone under test and a fixed magnet positioned on the edge of the rotating platform. When the mobile phone passes in front of the fixed magnet, the built-in magnetometer is stimulated, and its digital output is recorded and analyzed. For each mobile phone, the experiment is repeated over six different days to ensure consistency in the results. A total of 10 phones of different brands and models or of the same model were used in our experiment. The digital output from the magnetometers is synchronized and correlated, and statistical features are extracted to generate a fingerprint of the built-in magnetometer and, consequently, of the mobile phone. A SVM machine learning algorithm is used to classify the mobile phones on the basis of the extracted statistical features. Our results show that inter-model classification (i.e., different models and brands classification) is possible with great accuracy, but intra-model (i.e., phones with different serial numbers and same model) classification is more challenging, the resulting accuracy being just slightly above random choice.
机译:我们通过内置的磁力计来研究手机的识别。近年来,这些电子组件已开始在大众市场的电话中广泛部署,并且由于它们的物理差异(可在其产生的数字输出中出现),可以利用它们来唯一标识移动电话。这类似于文献中针对移动电话的其他组件(包括数码相机,麦克风或其RF传输组件)报告的方法。在本文中,识别是通过廉价的设备执行的,该设备由可旋转被测手机的平台和位于旋转平台边缘的固定磁铁组成。当手机经过固定磁铁前时,内置的磁力计将被激励,并记录和分析其数字输出。对于每部手机,都要在六个不同的天重复进行实验,以确保结果的一致性。我们的实验总共使用了10个不同品牌和型号或相同型号的手机。磁力计的数字输出被同步和关联,并且提取统计特征以生成内置磁力计的指纹,从而生成移动电话的指纹。 SVM机器学习算法用于根据提取的统计特征对手机进行分类。我们的结果表明,模型间分类(即不同型号和品牌的分类)的准确性很高,但模型内(即具有不同序列号和相同型号的手机)的分类更具挑战性,结果准确性略有下降以上随机选择。

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