TY - GEN
T1 - A user-centric privacy framework for pervasive environments
AU - Bagüés, Susana Alcalde
AU - Zeidler, Andreas
AU - Valdivielso, Carlos Fernandez
AU - Matias, Ignacio R.
PY - 2006
Y1 - 2006
N2 - One distinctive feature of pervasive computing environments is the common need to gather and process context information about real persons. Unfortunately, this unavoidably affects persons' privacy. Each time someone uses a cellular phone, a credit card, or surfs the web, he leaves a trace that is stored and processed. In a pervasive sensing environment, however, the amount of information collected is much larger than today and also might be used to reconstruct personal information with great accuracy. The question we address in this paper is how to control dissemination and flow of personal data across organizational, and personal boundaries, i.e., to potential addressees of privacy relevant information. This paper presents the User-Centric Privacy Framework (UCPF). It aims at protecting a user's privacy based on the enforcement of privacy preferences. They are expressed as a set of constraints over some set of context information. To achieve the goal of cross-boundary control, we introduce two novel abstractions, namely Transformations and Foreign Constraints, in order to extend the possibilities of a user to describe privacy protection criteria beyond the expressiveness usually found today. Transformations are understood as any process that the user may define over a specific piece of context. This is a main building block for obfuscating - or even plainly lying about - the context in question. Foreign Constraints are an important complementing extension because they allow for modeling conditions defined on external users that are not the tracked individual, but may influence disclosure of personal data to third parties. We are confident that these two easy-to-use abstractions together with the general privacy framework presented in this paper constitute a strong contribution to the protection of the personal privacy in pervasive computing environments.
AB - One distinctive feature of pervasive computing environments is the common need to gather and process context information about real persons. Unfortunately, this unavoidably affects persons' privacy. Each time someone uses a cellular phone, a credit card, or surfs the web, he leaves a trace that is stored and processed. In a pervasive sensing environment, however, the amount of information collected is much larger than today and also might be used to reconstruct personal information with great accuracy. The question we address in this paper is how to control dissemination and flow of personal data across organizational, and personal boundaries, i.e., to potential addressees of privacy relevant information. This paper presents the User-Centric Privacy Framework (UCPF). It aims at protecting a user's privacy based on the enforcement of privacy preferences. They are expressed as a set of constraints over some set of context information. To achieve the goal of cross-boundary control, we introduce two novel abstractions, namely Transformations and Foreign Constraints, in order to extend the possibilities of a user to describe privacy protection criteria beyond the expressiveness usually found today. Transformations are understood as any process that the user may define over a specific piece of context. This is a main building block for obfuscating - or even plainly lying about - the context in question. Foreign Constraints are an important complementing extension because they allow for modeling conditions defined on external users that are not the tracked individual, but may influence disclosure of personal data to third parties. We are confident that these two easy-to-use abstractions together with the general privacy framework presented in this paper constitute a strong contribution to the protection of the personal privacy in pervasive computing environments.
UR - https://www.scopus.com/pages/publications/33845425073
U2 - 10.1007/11915072_38
DO - 10.1007/11915072_38
M3 - Conference contribution
AN - SCOPUS:33845425073
SN - 3540482733
SN - 9783540482734
T3 - Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
SP - 1347
EP - 1356
BT - On the Move to Meaningful Internet Systems 2006
PB - Springer Verlag
T2 - OTM 2006 Workshops - OTM Confederated International Workshops
Y2 - 29 October 2006 through 3 November 2006
ER -