Publication | Open Access
An Efficient Activity Recognition Framework: Toward Privacy-Sensitive Health Data Sensing
35
Citations
42
References
2017
Year
EngineeringSmart CityUbiquitous HealthWearable TechnologyHuman MonitoringData ScienceData MiningDigital HealthSmart HomesInternet Of ThingsPublic HealthData ManagementRecent AdvancesParticipatory SensingKnowledge DiscoveryData PrivacyMobile ComputingComputer SciencePrivacyData SecurityIot Data AnalyticsMobile SensingHealth MonitoringActivity RecognitionHealth InformaticsBig DataSmart Health
Recent advances in wireless sensor networks for ubiquitous health and activity monitoring systems have triggered the possibility of addressing human needs in smart environments through recognizing human real-time activities. While the nature of streams in such networks requires efficient recognition techniques, it is also subject to suspicious inference-based privacy attacks. In this paper, we propose a framework that efficiently recognizes human activities in smart homes based on spatiotemporal mining technique. In addition, we propose a technique to enhance the privacy of the collected human sensed activities using a modified version of micro-aggregation approach. An extensive validation of our framework has been performed on benchmark data sets yielding quite promising results in terms of accuracy and privacy-utility tradeoff.
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