Authors
Said Jawad Saidi, Anna Maria Mandalari, Roman Kolcun, Hamed Haddadi, Daniel J Dubois, David Choffnes, Georgios Smaragdakis, Anja Feldmann
Publication date
2020/10/27
Book
Proceedings of the ACM Internet Measurement Conference
Pages
87-100
Description
Consumer Internet of Things (IoT) devices are extremely popular, providing users with rich and diverse functionalities, from voice assistants to home appliances. These functionalities often come with significant privacy and security risks, with notable recent large-scale coordinated global attacks disrupting large service providers. Thus, an important first step to address these risks is to know what IoT devices are where in a network. While some limited solutions exist, a key question is whether device discovery can be done by Internet service providers that only see sampled flow statistics. In particular, it is challenging for an ISP to efficiently and effectively track and trace activity from IoT devices deployed by its millions of subscribers---all with sampled network data.
In this paper, we develop and evaluate a scalable methodology to accurately detect and monitor IoT devices at subscriber lines with limited, highly sampled …
Total citations
20202021202220232024216192611
Scholar articles
SJ Saidi, AM Mandalari, R Kolcun, H Haddadi… - Proceedings of the ACM Internet Measurement …, 2020
S Jawad Saidi, AM Mandalari, R Kolcun, H Haddadi… - arXiv e-prints, 2020