% % This file was created by the TYPO3 extension % bib % --- Timezone: CEST % Creation date: 2024-07-04 % Creation time: 05-23-55 % --- Number of references % 5 % @Incollection { 2017-cps-henze-network, title = {Network Security and Privacy for Cyber-Physical Systems}, year = {2017}, month = {11}, day = {13}, pages = {25-56}, tags = {sensorcloud,ipacs}, editor = {Song, Houbing and Fink, Glenn A. and Jeschke, Sabina}, publisher = {Wiley-IEEE Press}, edition = {First}, chapter = {2}, booktitle = {Security and Privacy in Cyber-Physical Systems: Foundations, Principles and Applications}, language = {en}, ISBN = {978-1-119-22604-8}, DOI = {10.1002/9781119226079.ch2}, reviewed = {1}, author = {Henze, Martin and Hiller, Jens and Hummen, Ren{\'e} and Matzutt, Roman and Wehrle, Klaus and Ziegeldorf, Jan Henrik} } @Inproceedings { 2017-henze-trustcom-dcam, title = {Distributed Configuration, Authorization and Management in the Cloud-based Internet of Things}, year = {2017}, month = {8}, day = {1}, pages = {185-192}, tags = {sscilops, ipacs}, url = {https://www.comsys.rwth-aachen.de/fileadmin/papers/2017/2017-henze-trustcom-dcam.pdf}, misc2 = {Online}, publisher = {IEEE}, booktitle = {Proceedings of the 16th IEEE International Conference on Trust, Security and Privacy in Computing and Communications (IEEE TrustCom), Sydney, NSW, Australia}, language = {en}, ISBN = {978-1-5090-4905-9}, ISSN = {2324-9013}, DOI = {10.1109/Trustcom/BigDataSE/ICESS.2017.236}, reviewed = {1}, author = {Henze, Martin and Wolters, Benedikt and Matzutt, Roman and Zimmermann, Torsten and Wehrle, Klaus} } @Article { 2017-ziegeldorf-bmcmedgenomics-bloom, title = {BLOOM: BLoom filter based Oblivious Outsourced Matchings}, journal = {BMC Medical Genomics}, year = {2017}, month = {7}, day = {26}, volume = {10}, number = {Suppl 2}, pages = {29-42}, abstract = {Whole genome sequencing has become fast, accurate, and cheap, paving the way towards the large-scale collection and processing of human genome data. Unfortunately, this dawning genome era does not only promise tremendous advances in biomedical research but also causes unprecedented privacy risks for the many. Handling storage and processing of large genome datasets through cloud services greatly aggravates these concerns. Current research efforts thus investigate the use of strong cryptographic methods and protocols to implement privacy-preserving genomic computations. We propose FHE-Bloom and PHE-Bloom, two efficient approaches for genetic disease testing using homomorphically encrypted Bloom filters. Both approaches allow the data owner to securely outsource storage and computation to an untrusted cloud. FHE-Bloom is fully secure in the semi-honest model while PHE-Bloom slightly relaxes security guarantees in a trade-off for highly improved performance. We implement and evaluate both approaches on a large dataset of up to 50 patient genomes each with up to 1000000 variations (single nucleotide polymorphisms). For both implementations, overheads scale linearly in the number of patients and variations, while PHE-Bloom is faster by at least three orders of magnitude. For example, testing disease susceptibility of 50 patients with 100000 variations requires only a total of 308.31 s (\(\sigma\)=8.73 s) with our first approach and a mere 0.07 s (\(\sigma\)=0.00 s) with the second. We additionally discuss security guarantees of both approaches and their limitations as well as possible extensions towards more complex query types, e.g., fuzzy or range queries. Both approaches handle practical problem sizes efficiently and are easily parallelized to scale with the elastic resources available in the cloud. The fully homomorphic scheme, FHE-Bloom, realizes a comprehensive outsourcing to the cloud, while the partially homomorphic scheme, PHE-Bloom, trades a slight relaxation of security guarantees against performance improvements by at least three orders of magnitude.}, note = {Proceedings of the 5th iDASH Privacy and Security Workshop 2016}, keywords = {Secure outsourcing; Homomorphic encryption; Bloom filters}, tags = {sscilops; mynedata; rfc}, url = {https://www.comsys.rwth-aachen.de/fileadmin/papers/2017/2017-ziegeldorf-bmcmedgenomics-bloom.pdf}, misc2 = {Online}, publisher = {BioMed Central}, event_place = {Chicago, IL, USA}, event_date = {November 11, 2016}, language = {en}, ISSN = {1755-8794}, DOI = {10.1186/s12920-017-0277-y}, reviewed = {1}, author = {Ziegeldorf, Jan Henrik and Pennekamp, Jan and Hellmanns, David and Schwinger, Felix and Kunze, Ike and Henze, Martin and Hiller, Jens and Matzutt, Roman and Wehrle, Klaus} } @Inproceedings { 2017-henze-ic2e-prada, title = {Practical Data Compliance for Cloud Storage}, year = {2017}, month = {4}, day = {4}, pages = {252-258}, tags = {ssiclops, ipacs}, url = {https://www.comsys.rwth-aachen.de/fileadmin/papers/2017/2017-henze-ic2e-prada.pdf}, misc2 = {Online}, publisher = {IEEE}, booktitle = {Proceedings of the 2017 IEEE International Conference on Cloud Engineering (IC2E 2017), Vancouver, BC, Canada}, language = {en}, ISBN = {978-1-5090-5817-4}, DOI = {10.1109/IC2E.2017.32}, reviewed = {1}, author = {Henze, Martin and Matzutt, Roman and Hiller, Jens and M{\"u}hmer, Erik and Ziegeldorf, Jan Henrik and van der Giet, Johannes and Wehrle, Klaus} } @Inproceedings { 2017-matzutt-mynedata, title = {myneData: Towards a Trusted and User-controlled Ecosystem for Sharing Personal Data}, year = {2017}, pages = {1073-1084}, abstract = {Personal user data is collected and processed at large scale by a handful of big providers of Internet services. This is detrimental to users, who often do not understand the privacy implications of this data collection, as well as to small parties interested in gaining insights from this data pool, e.g., research groups or small and middle-sized enterprises. To remedy this situation, we propose a transparent and user-controlled data market in which users can directly and consensually share their personal data with interested parties for monetary compensation. We define a simple model for such an ecosystem and identify pressing challenges arising within this model with respect to the user and data processor demands, legal obligations, and technological limits. We propose myneData as a conceptual architecture for a trusted online platform to overcome these challenges. Our work provides an initial investigation of the resulting myneData ecosystem as a foundation to subsequently realize our envisioned data market via the myneData platform.}, note = {Presentation slides are in German}, keywords = {Personal User Data, Personal Information Management, Data Protection Laws, Privacy Enhancing Technologies, Platform Design, Profiling}, tags = {mynedata_show}, url = {https://www.comsys.rwth-aachen.de/fileadmin/papers/2017/2017-matzutt-informatik-mynedata.pdf}, web_url = {https://www.comsys.rwth-aachen.de/fileadmin/misc/mynedata/talks/2017-matzutt-informatik-mynedata-presentation.pdf}, web_url_date = {Presentation slides}, editor = {Eibl, Maximilian and Gaedke, Martin}, publisher = {Gesellschaft f{\"u}r Informatik, Bonn}, booktitle = {INFORMATIK 2017}, event_place = {Chemnitz}, event_name = {INFORMATIK 2017}, event_date = {2017-09-28}, language = {English}, ISBN = {978-3-88579-669-5}, ISSN = {1617-5468}, DOI = {10.18420/in2017_109}, reviewed = {1}, author = {Matzutt, Roman and M{\"u}llmann, Dirk and Zeissig, Eva-Maria and Horst, Christiane and Kasugai, Kai and Lidynia, Sean and Wieninger, Simon and Ziegeldorf, Jan Henrik and Gudergan, Gerhard and Spiecker gen. D{\"o}hmann, Indra and Wehrle, Klaus and Ziefle, Martina} }