Inken Hagestedt
5 Papers
8 Citations
Inken Hagestedt is an academic researcher. The author has contributed to research in topics: Augmented reality & Differential privacy. The author has an hindex of 2, co-authored 5 publications.
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Papers
Privacy-aware eye tracking using differential privacy
Julian Steil,Inken Hagestedt,Michael Xuelin Huang,Andreas Bulling +3 more
- 25 Jun 2019
TL;DR: A large-scale online survey on privacy aspects of eye tracking is reported that provides the first comprehensive account of with whom, for which services, and to what extent users are willing to share their gaze data.
100
Privacy-Aware Eye Tracking Using Differential Privacy.
TL;DR: In this paper, the authors report a large-scale online survey on privacy aspects of eye tracking that provides the first comprehensive account of with whom, for which services, and to what extent users are willing to share their gaze data.
49
Adversarial Attacks on Classifiers for Eye-based User Modelling
Inken Hagestedt,Michael Backes,Andreas Bulling +2 more
- 02 Jun 2020
TL;DR: This article showed that state-of-the-art classifiers for eye-based user modelling are highly vulnerable to adversarial examples: small artificial perturbations in gaze input that can dramatically change a classifier's predictions.
5
Adversarial Attacks on Classifiers for Eye-based User Modelling
TL;DR: It is shown that state-of-the-art classifiers for eye-based user modelling are highly vulnerable to adversarial examples: small artificial perturbations in gaze input that can dramatically change a classifier’s predictions.
3
Membership Inference Against DNA Methylation Databases
Inken Hagestedt,Mathias Humbert,Pascal Berrang,Irina Lehmann,Roland Eils,Michael Backes,Yang Zhang +6 more
- 07 Sep 2020
TL;DR: An extensive evaluation on six datasets containing a diverse set of tissues and diseases collected from more than 1,300 individuals shows that membership inference attacks are effective, even when the target's methylation profile is not accessible, and that learned models are transferable across different datasets.