CRAug 13, 2013

Extended Capabilities for a Privacy-Enhanced Participatory Sensing Infrastructure (PEPSI)

arXiv:1308.2921v165 citations
Originality Incremental advance
AI Analysis

This work addresses privacy issues for users and applications in participatory sensing, offering incremental improvements to existing security methods.

The authors tackled privacy concerns in participatory sensing by proposing PEPSI, a privacy-enhanced infrastructure that protects data producers and consumers with provable security, achieving this at very low computational cost and minimal communication overhead.

Participatory sensing is emerging as an innovative computing paradigm that targets the ubiquity of always-connected mobile phones and their sensing capabilities. In this context, a multitude of pioneering applications increasingly carry out pervasive collection and dissemination of information and environmental data, such as, traffic conditions, pollution, temperature, etc. Participants collect and report measurements from their mobile devices and entrust them to the cloud to be made available to applications and users. Naturally, due to the personal information associated to the reports (e.g., location, movements, etc.), a number of privacy concerns need to be taken into account prior to a large-scale deployment of these applications. Motivated by the need for privacy protection in Participatory Sensing, this work presents PEPSI: a Privacy-Enhanced Participatory Sensing Infrastructure. We explore realistic architectural assumptions and a minimal set of formal requirements aiming at protecting privacy of both data producers and consumers. We propose two instantiations that attain privacy guarantees with provable security at very low additional computational cost and almost no extra communication overhead.

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