Abstract

With the development of Internet of Things, many applications need to use people’s location information, resulting in a large amount of data need to be processed, called big data. In recent years, people propose many methods to protect privacy in the location-based service aspect. However, existing technologies have poor performance in big data area. For instance, sensor equipments such as smart phones with location record function may submit location information anytime and anywhere which may lead to privacy disclosure. Attackers can leverage huge data to achieve useful information. In this article, we propose noise-added selection algorithm, a location privacy protection method that satisfies differential privacy to prevent the data from privacy disclosure by attacker with arbitrary background knowledge. In view of Internet of Things, we maximize the availability of data and algorithm when protecting the information. In detail, we filter real-time location distribution information, use our selection mechanism for comparison and analysis to determine privacy-protected regions, and then perform differential privacy on them. As shown in the theoretical analysis and the experimental results, the proposed method can achieve significant improvements in security, privacy, and complete a perfect balance between privacy protection level and data availability.

Highlights

  • Internet of Things (IoT) has gradually become a popular guide in people’s lives, forming a large number of applications related to its background scene.[1]

  • We propose our privacy strategy based on the Location-based service (LBS) with Body sensor network (BSN)

  • We proposed a location data releasing method based on differential privacy (DP), called noise-added selection (NAS)

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Summary

Introduction

Internet of Things (IoT) has gradually become a popular guide in people’s lives, forming a large number of applications related to its background scene.[1]. Body sensor network (BSN)[7] is a perfect way to make use of LBS It forms a huge database by collecting real-time uploaded information data from various portable devices. People use their smart phones to submit their location anytime and anywhere These data brought by people can be stared by various attacker.[8] it is essential to propose a strategy for BSN. Obtaining people’s location information infringes on the privacy of people at the current moment and helps predict the future location This is the purpose of the attackers. We argue the DP model can provide the most suitable privacy-preserving method for location-based information. The real-world IoT datasets and experimental results are presented in section ‘‘Evaluation,’’ and conclusions are given in section ‘‘Conclusion.’’

Related work
Evaluation
Method
Conclusion

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