Anonymizing Motion Sensor Data Through Time-Frequency Domain

Pierre Rougé, A. Moukadem, A. Dieterlen, A. Boutet, Carole Frindel
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引用次数: 2

Abstract

The recent development of Internet of Things (IoT) has democratized activity monitoring. Even if the data collected can be useful for healthcare, sharing this sensitive information exposes users to privacy threats and re-identification. This paper presents two approaches to anonymize the motion sensor data. The first is an extension of an earlier work based on filtering in the time-frequency plane and convolutional neural network; and the second is based on handcrafted features extracted from the zeros distribution of the time-frequency representation. The two approaches are evaluated on a public dataset to assess the accuracy of activity recognition and user re-identification. With the first approach we obtained an accuracy rate in activity recognition of 73% while limiting the identity recognition to an accuracy rate of 30% which corresponds to an activity identity ratio of 2.4. With the second approach we succeeded in improving the activity and identity ratio to 2.67 by attaining an accuracy rate in activity recognition of 80% while maintaining the re-identification rate at 30%.
基于时频域的运动传感器数据匿名化
最近物联网(IoT)的发展使活动监测民主化。即使收集的数据可能对医疗保健有用,共享这些敏感信息也会使用户面临隐私威胁和重新识别。本文提出了两种匿名化运动传感器数据的方法。第一个是基于时频平面滤波和卷积神经网络的早期工作的扩展;第二种是基于从时频表示的零分布中提取的手工特征。在一个公共数据集上对这两种方法进行了评估,以评估活动识别和用户再识别的准确性。使用第一种方法,我们获得了73%的活动识别准确率,而将身份识别的准确率限制在30%,对应于2.4的活动识别比率。通过第二种方法,我们成功地将活动和识别比提高到2.67,在活动识别中达到80%的准确率,同时保持30%的重新识别率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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