Authors
Nazir Saleheen, Md Azim Ullah, Supriyo Chakraborty, Deniz S Ones, Mani Srivastava, Santosh Kumar
Publication date
2021/11/12
Book
Proceedings of the 2021 ACM SIGSAC Conference on Computer and Communications Security
Pages
2807-2823
Description
Public release of wrist-worn motion sensor data is growing. They enable and accelerate research in developing new algorithms to passively track daily activities, resulting in improved health and wellness utilities of smartwatches and activity trackers. But, when combined with sensitive attribute inference attack and linkage attack via re-identification of the same user in multiple datasets, undisclosed sensitive attributes can be revealed to unintended organizations with potentially adverse consequences for unsuspecting data contributing users. To guide both users and data collecting researchers, we characterize the re-identification risks inherent in motion sensor data collected from wrist-worn devices in users' natural environment. For this purpose, we use an open-set formulation, train a deep learning architecture with a new loss function, and apply our model to a new data set consisting of 10 weeks of daily sensor …
Total citations
202220232024161
Scholar articles
N Saleheen, MA Ullah, S Chakraborty, DS Ones… - Proceedings of the 2021 ACM SIGSAC Conference on …, 2021