Leveraging Disentangled Representations to Improve Vision-Based Keystroke Inference Attacks Under Low Data
John Lim, Jan-Michael Frahm, Fabian Monrose

TL;DR
This paper introduces a disentangled representation learning approach to enhance keystroke inference attacks using limited real data by leveraging synthetic data and domain adaptation techniques.
Contribution
It proposes a novel supervised disentangled learning method for domain adaptation that improves keystroke inference attack performance with low data availability.
Findings
Method prevents overfitting on small real datasets
Enhances attack effectiveness using synthetic data
Improves generalization of keystroke inference models
Abstract
Keystroke inference attacks are a form of side-channel attacks in which an attacker leverages various techniques to recover a user's keystrokes as she inputs information into some display (e.g., while sending a text message or entering her pin). Typically, these attacks leverage machine learning approaches, but assessing the realism of the threat space has lagged behind the pace of machine learning advancements, due in-part, to the challenges in curating large real-life datasets. We aim to overcome the challenge of having limited number of real data by introducing a video domain adaptation technique that is able to leverage synthetic data through supervised disentangled learning. Specifically, for a given domain, we decompose the observed data into two factors of variation: Style and Content. Doing so provides four learned representations: real-life style, synthetic style, real-life…
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Taxonomy
TopicsUser Authentication and Security Systems · Hand Gesture Recognition Systems
