EAI Endorsed Transactions on Internet of Things (Jan 2017)

Privacy-Preserving Collaborative Blind Macro-Calibration of Environmental Sensors in Participatory Sensing

  • Jan-Frederic Markert,
  • Matthias Budde,
  • Gregor Schindler,
  • Markus Klug,
  • Michael Beigl

DOI
https://doi.org/10.4108/eai.15-1-2018.153564
Journal volume & issue
Vol. 3, no. 10

Abstract

Read online

The ubiquity of ever-connected smartphones has lead to new sensing paradigms that promise environmentalmonitoring in unprecedented temporal and spatial resolution. Everyday people may use low-cost sensors to collect environmental data. However, measurement errors increase over time, especially with low-cost airquality sensors. Therefore, regular calibration is important. On a larger scale and in participatory sensing, this needs be done in-situ. Since for this step, personal sensor data, time and location need to be exchanged, privacy implications arise. This paper presents a novel privacy-preserving multi-hop sensor calibration scheme, that combines Private Proximity Testing and an anonymizing MIX network with cross-sensor calibration based on rendezvous. Our evaluation with simulated ozone measurements and real-world taxicab mobility traces shows that our scheme provides privacy protection while maintaining competitive overall data quality in dense participatory sensing networks.

Keywords