Up-to-date Threat Modelling for Soft Privacy on Smart Cars
Mario Raciti, Giampaolo Bella

TL;DR
This paper updates a threat-modelling methodology for soft privacy in smart cars, incorporating new documentation sources and identifying extensive domain-specific threats to enhance privacy protection.
Contribution
It introduces an updated threat-modelling approach tailored for soft privacy in automotive contexts, integrating new sources and expanding threat identification.
Findings
23 domain-independent threats identified
43 domain-specific assets analyzed
525 domain-dependent threats documented
Abstract
Physical persons playing the role of car drivers consume data that is sourced from the Internet and, at the same time, themselves act as sources of relevant data. It follows that citizens' privacy is potentially at risk while they drive, hence the need to model privacy threats in this application domain. This paper addresses the privacy threats by updating a recent threat-modelling methodology and by tailoring it specifically to the soft privacy target property, which ensures citizens' full control on their personal data. The methodology now features the sources of documentation as an explicit variable that is to be considered. It is demonstrated by including a new version of the de-facto standard LINDDUN methodology as well as an additional source by ENISA which is found to be relevant to soft privacy. The main findings are a set of 23 domain-independent threats, 43 domain-specific…
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Taxonomy
TopicsVehicular Ad Hoc Networks (VANETs) · Privacy, Security, and Data Protection · Privacy-Preserving Technologies in Data
