Detecting Location Fraud in Indoor Mobile Crowdsensing
Abstract
Mobile crowdsensing allows a large number of mobile devices to measure
phenomena of common interests and form a body of knowledge about natural and
social environments. In order to get location annotations for indoor mobile
crowdsensing, reference tags are usually deployed which are susceptible to
tampering and compromises by attackers. In this work, we consider three types
of location-related attacks including tag forgery, tag misplacement, and tag
removal. Different detection algorithms are proposed to deal with these
attacks. First, we introduce location-dependent fingerprints as supplementary
information for better location identification. A truth discovery algorithm is
then proposed to detect falsified data. Moreover, visiting patterns are
utilized for the detection of tag misplacement and removal. Experiments on both
crowdsensed and emulated dataset show that the proposed algorithms can detect
all three types of attacks with high accuracy.